What Determines TSR Executive Summary -...
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What Determines TSR – Executive Summary (Download the full report at www.evaDimensions.com/EVA2TSR/report)
By Bennett Stewart CEO, EVA Dimensions LLC, Author of Best-Practice EVA Copyright © 2013 by EVA Dimensions LLC. All rights reserved.
Total shareholder return, always an important measure, has achieved much greater prominence
over the past few years. One reason is that Institutional Shareholder Services (ISS), the largest proxy
adviser, has announced that it is using TSR, and TSR alone, to test the adequacy of links between
incentive pay and company performance. Boards are understandably concerned, especially in the new
era of say-on-pay proxy voting, and compensation committees are scrambling to understand the
implications for pay plans. The most important implication, explained in detail below, is that companies
ought to scrap most existing plans and opt for ones that base bonus awards on economic profit or, as I
call it, EVA, standing for economic value added. EVA is the performance measure that best ranks
companies by the TSRs they generate and it is also one that managers can actually manage.
The emphasis that ISS and others are putting on TSR makes sense. TSR, after all, is the rate of
return investors receive, measured as dividend yield plus the percent change in share price over a
holding period. It is the only performance that shareholders can take to the bank, and the ultimate
gauge of the success or failure of their investment. Maximizing TSR should be a key goal of every
company, especially when viewed over longer horizons and relative to peer companies, which is the
perspective ISS is taking as well.
The TSR test, however, creates serious problems for compensation committees. For one, TSR
measures the return but is mute about how that return was generated—or how to go about increasing
it. It also cannot be measured for individual business lines or business decisions. It is simply too
abstract and too far removed from actual decision-making to motivate managers in ways that will
actually improve the return. Nearly everyone recognizes this, including ISS, which advises companies to
base incentives on short- and long-term business goals and not on TSR. What’s needed is to understand
the business success factors that drive TSR, and to pay for them and use them in managing the business.
This leads to the second, greater problem. Every conventional metric—earnings, earnings
growth, EPS, the assorted rate-of-return measures, cash flow—can produce a performance “answer”
that is the opposite of what’s really happening. Each one can “improve” when true economic
performance and company value and TSR are deteriorating, and can look bad when a company’s
fortunes actually have risen. Each one tells half-truths or outright untruths, but never the whole truth.
A company’s reported earnings, for example, increase whenever the rate of return it earns on
incremental investment exceeds the after-tax cost of the funds borrowed to finance the investment,
which these days might be as paltry as just a few percentage points. Stock prices, however, increase
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only if the return covers the full weighted average cost of capital. Put another way, using earnings to
judge corporate performance is like judging a basketball player by the number of points scored. That
gives each player the incentive to take as many shots as possible in the hope of scoring points even
when others have a better shot at the basket1.
Return measures are also flawed, but in the opposite direction. Judging corporate performance
with a return measure is like judging a basketball player by shooting percentage. The incentive is to take
a sure layup and then stop shooting. ROI-focused firms behave like that. They neglect genuinely
profitable expansion opportunities that happen to generate returns lower than their existing ROI or
lower than an arbitrary return target that top management has established. This has led to some of the
biggest blunders in business history. IBM delayed entering the desktop PC business throughout the
1970s in order to avoid diluting the 25% ROI it was earning in its mainframe business—and handed
fortunes to West Coast startups in the process. In a more recent example August Busch rejected global
expansion at Anheuser Busch because it would not match the frothy returns and margins he was
earnings in his domestic beer business—which ultimately made the company vulnerable to a hostile
takeover. It is little wonder Harvard Professor Clay Christensen has blamed a fixation on maintaining
high margins and returns with the “Innovator’s Dilemma,” which is the tendency of established
companies to cede leadership to upstart rivals2.
Compensation consultants generally understand this and are in broad agreement that no
conventional financial measure provides a truly reliable score on corporate performance or a
trustworthy link to TSR. As a result, most pay advisers counsel clients to use at least two or three
metrics in ways that appropriately balance growth and profitability. ISS, too, acknowledges that no
single standard exists to measure corporate performance and manage a business in a way that directly
contributes to improving TSR, and so it advises companies that “key metrics may vary considerably from
industry to industry and from company to company depending on their particular business strategy at
any given time.”
So how can directors—or anyone, for that matter—know which metrics to choose and how to
weight them? How does a comp committee balance an increase in earnings with a decline in ROI, for
instance, when the goal is to propel the firm’s TSR? Most important, how does this metric soup of
conflicting measures provide managers with the practical information and insights they and their teams
need to make the best decisions?
Contrary to popular opinion, there is an answer. The solution lies in using EVA. It is the one and
only financial metric with a direct, provable link to TSR, as I will show. EVA measures profit according to
economic principles and for the purpose of managing a business and maximizing value, and not by
following accounting conventions. The biggest difference is that EVA measures profit after deducting a
charge for the full weighted-average cost of all the capital invested in a firm’s business assets, which
includes setting aside a minimum competitive return for the shareowners. If a firm’s net operating
profit after taxes, or NOPAT, is $150, and if it has $1,000 invested in net business assets with a 10%
1 For a detailed critique of earnings growth, consult “Let’s Abandon Earnings Per Share,” available from the author.
2 For a detailed critique of ROI, consult “Stop Using ROI,” available from the author.
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blended cost of capital, for a capital charge of $100, then its EVA is $50, the remainder. Put simply, EVA
measures quality earnings after setting aside a priority return for the owners (and in practice after
eliminating other accounting distortions that make no business or economic sense3). An increase in EVA
profit is thus a surer indication than any other that a company has truly made progress and increased its
value through some combination of cutting costs, managing its assets and turning them faster, and
profitably growing its business. No other measure or combination of measures captures the total
essence of performance so succinctly and so accurately.
This is not just an assertion or a debatable point. More EVA will always produce a higher TSR
than less EVA for any company. I will demonstrate this by first explaining the theoretical link between
EVA and TSR. I will show, through logic and with simple formulas, that managing for higher EVA is, by
definition, managing for a higher TSR. Then I will present empirical evidence that EVA does, in fact,
explain differences in TSR better and more completely than any other financial metric.
The underlying reason is that EVA has a wholly predictable, actually mathematical, link with
creating value. The link is net present value. As modern financial theory holds, the intrinsic value of
every company is the net present value, or NPV, of the cash flows it will generate in the future. That is
well known and generally acknowledged to be true. What is not so well known, but crucial, is that for
any given set of assumptions about future operations, the present value of the forecasted EVA is always
exactly the same as the net present value of forecasted cash flows. That is because EVA sets aside the
profit that must be earned in each period to recover the value of the capital that has been or will be
invested. As a result, EVA always discounts to the value added to the invested capital, which is the same
thing as the net present value.
If an investment decision or business plan shows that EVA will run around zero (in other words,
that it will just break even in an economic sense of covering the full opportunity cost of all resources,
including a competitive return on the capital) then the net present value of cash flows generated by that
business plan or investment will also be zero, by definition. Simply put, no EVA is no NPV. The only way
that value is created—that investors will realize a premium value above the capital they’ve put or left in
the business—is if a positive EVA profit is earned. And the more EVA earned, and the faster it grows,
and the longer and surer it endures, the greater will be the firm’s franchise value and its overall net
present value.
The implications of this are enormous. It means that EVA is the very best performance goal for
maximizing TSR. Because managing for the highest possible EVA is the same thing as managing for the
3 Other distortions EVA eliminates include: removing excess cash to focus on business profits; treating leased assets as if they are owned;
reversing impairment charges by taking them out of earnings and putting them back into balance sheet capital (no mulligans are allowed to artificially increase EVA in subsequent periods); similarly, adding restructuring charges back to earnings and back to balance sheet capital, subject to the capital charge (the incentive is for managers to fail fast—no charge stands in their way—and to fail well—to invest cash in streamlining the business only if it will cover the cost of capital); writing off R&D and brand-building advertising outlays over time, like 3-5 years, and subjecting them to the cost of capital interest charge on the un-amortized balance (which deters managers from cutting the spending to make a short term earnings goal and encourages them to increase it if the investment is strategically promising); smoothing tax gyrations and crediting EVA for the cost of capital saved by deferring taxes; swapping service cost for the reported pension cost and correctly accounting for the cost of closing a funding gap; and holding back a portion of the capital invested in strategic decisions, like acquisitions, and metering it back into capital over time, with interest. The adjustments make EVA a surer, sooner measure of the value-added period by period, but not without some added complexity. In practice, each company must choose to track the 3-5 most material and applicable adjustments.
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highest NPV, then maximizing EVA has to produce the highest TSR over time. Cash dividends and cash-
equivalent share-price changes are simply the messengers. They just transmit the return that is in fact
determined by the firm’s EVA. That’s the idea in a nutshell, but as I said, a formal proof is coming, and it
requires the use of two other variables, TIR and MVA, which bear explanation.
TIR stands for total investor return. It is the return a company generates on behalf of all
investors—its lenders and shareholders combined. It’s the return you’d get if you bought all the stock
and bonds and held all of the liabilities of the company (except trade credit). It’s the return that flows
out of the business, and as it happens, it is the underlying source of TSR. The return that a firm provides
to its shareholders is always just a leveraged version of the return it earns in its business.
TIR is computed similarly to TSR, as a cash yield and capital gain, but for the company as a
whole. To be specific, it is the return generated by the company’s “free” cash flow plus the change in
the company’s overall market value over the period, divided by the market value of the firm’s debt and
equity at the beginning of the period4.
Free cash flow, or FCF for short, is the net cash generated or required by the firm’s business
activities, and as such, it is also equal to the cash sum that can be paid out to all the investors—to the
lenders and shareholders combined—or that must be raised from them if it is negative. It is computed
by taking the NOPAT the firm generates in the period and deducting the period to period change in the
amount of balance sheet capital tied up in business assets. What’s left over is its free cash flow available
to distribute or that must be financed5.
A cautionary note—the role of free cash flow in the TIR calculation is not what it may seem. If a
company steps up investment spending, its free cash flow in the period goes down, and may even turn
negative. That would seem to imply that its TIR would go down, and that a company should always be
shortsighted and constrain investment spending to maximize its return. But if the market believes that
the investments will cover the overall cost of capital and will increase the firm’s EVA profit, then the
firm’s market value will increase by more than its cash flow decreases, and its TIR will end up higher on
net. TIR must be higher because when EVA increases, the firm’s net present value increases, and it is
the net present value of investments that determines whether TIR rises or falls, and not the current cash
flow. The opportunity that EVA presents to increase TIR by investing capital and accelerating profitable
growth is not at all obvious when the business return is expressed as a free cash yield and value change,
for the two typically move in opposite directions. But it will become perfectly clear when the return is
converted into an EVA format, which is one of the forthcoming steps in the proof.
The other measure that needs to be defined is MVA, for market value added. It is a company’s
total market value or enterprise value less its invested capital. For example, a firm that trades for an
overall debt and equity market value of $1 billion, and that has invested a total of $600 million in its net
4 Technically, the return is measured on the market value of equity and “net debt,” as excess cash and the associated investment income are
removed to focus more closely on business results. 5 NOPAT is measured net of depreciation, and balance sheet capital is measured net of the accumulated depreciation; ergo, NOPAT less the
period change in balance sheet capital is a true cash flow measure. NOPAT also is measured before any interest payments or dividends.
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business assets, has an MVA of $400 million, the difference. MVA is a significant measure in its own
right, more important than TSR in many ways, and certainly a measure all boards should monitor.
First of all, it measures the owners’ wealth. It compares the capital that owners have put or left
in the business since the start of the company with the value they can now take out of it. Second, it
measures the company’s franchise value. It is the value of the business above putting its assets in a pile.
It is the value premium attributable to all of the proprietary assets and distinctive capabilities that
enable the firm to earn a true economic profit. It is lastly the market’s assessment of the firm’s overall
NPV. Because it is equal to market value minus invested capital, it is literally a summing up in the
market’s mind of the net present value of all past and projected capital investment projects. An
increase in MVA shows, as no other measure can, how successful a company has been at allocating,
managing, and re-deploying assets of all kinds so as to maximize the net present value of the enterprise
and thus to maximize the wealth of the owners. Unsurprisingly, then, an increase in MVA—which
measures the increase in owner wealth and in corporate aggregate NPV—is an essential factor in the
firm’s TIR and in propelling TSR, as will be shown.
The formal proof proceeds in three steps. The first is to establish that TSR is just a leveraged
version of TIR, that the return for the shareholders is derived from the return earned in the business. A
formula links the two, and empirical data presented below show that the formula accurately describes
real-world relationships. Given this, the question becomes: what determines TIR? What determines the
return earned in the business?
The second step is to show that TIR is a function of earning EVA and increasing MVA. It is
classically defined as coming from corporate cash flow and a capital gain, but that is deceptive. TIR
really is a function of generating economic profit and expanding the net present value of the business.
This is intuitively sensible, and again, not a debatable point. This is true by definition. It is a math
derivation.
The last step is to ask which corporate performance measure is best correlated with the change
in MVA because that is the one element in the TIR formula that is not directly measurable from
corporate financial records. A company’s EVA, for example, is directly measurable and manageable, but
MVA is a market measure that depends on how investors value a business. The question is, which
corporate performance measure provides the best proxy for increasing it? What is the real key to
creating wealth and to expanding the NPV of an enterprise?
In principle, the answer is the change in EVA, and that’s what the answer should be in practice
as well. Because a projection of EVA always discounts to the exact same NPV as discounted cash flow,
and because MVA is the market assessment of the NPV of the business, MVA by definition is determined
at any point in time by the expected present value of consolidated EVA. If investors use past trends in
EVA as a key input shaping future expectations, a strong correlation should exist between movements in
EVA and movements in MVA. Changes in EVA should be a strong proxy for changes in MVA. By
contrast, there is no a priori reason to expect that any other measure or combination of measures will
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do as well. There is no economically grounded math formula that connects NPV or owner wealth to EPS
or ROI or sales growth or EBITDA, for instance.
The good news is that the change in EVA does indeed do the very best job of explaining changes
in MVA—far better than any of the other financial metrics. What makes sense in principle is borne out
in the data. Though not apparent in the daily drumbeat, the stock market does march to an economic
logic that can be detected at a distance.
In summary, the proof steps are to show that:
1. TSR is a mathematical function of TIR and leverage; business operating performance and
capital structure underpin the TSR a firm earns for its shareholders.
2. TIR is a mathematical function of EVA and the change in MVA; while cash flows transmit the
return, earning economic profit and increasing the firm’s NPV actually determine it.
3. The change in MVA is best explained by the change in EVA. Not only is this expected,
because the present value of EVA is mathematically identical to the net present value of
cash flow, but it also is shown to work on a universe of stocks.
Trace it all through, and TSR is a function of earning and increasing EVA. The clear conclusion is
that boards should hitch management bonus pay to increases in EVA as the most practical way to link
pay to performance. Now let’s dig into the details.
Step 1. TSR is a Function of TIR (Business Performance Drives Shareholder Returns)
Briefly stated, TSR is linked to TIR because the shareholders own the business after paying off
the creditors, and their returns are fundamentally related to the performance of the business. This is
best seen through the concept of excess return, which is defined as the monetary gain or loss from
investing in a specific investment compared to investing in a benchmark portfolio. For example, if an
investment of $1,000 yields a 15% return when the relevant benchmark return is 10%, the excess return
is $50. That is the income the investment produced above what would otherwise be earned at the same
risk.
A company’s excess return comes from the performance of its business. It is the TIR earned in
the business, less the weighted average cost of capital (COC) as the relevant benchmark, multiplied
times the firm’s opening market value, or in symbols.
$ Excess Total Return = (TIR – COC) x Market Value
Let’s take an example using Dow Chemical for 2012. Its TIR for that period, coming from its
corporate free cash flow and the change in its aggregate market value, was 10.7%—well above its
weighted average cost of capital, which was 4.5% that year. With an opening net debt plus equity
market value of $59.4 billion, the monetary gain that Dow produced for its investors over giving them
just the benchmark cost of capital return was a healthy $3.770 billion total that year.
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$ Excess Total Return = ( TIR – COC ) x Market Value $3.770 Billion = (10.9% – 4.5%) x $59.4 Billion The total excess return a business generates must accrue to the firm’s investors as a group. It
must be divvied up among the firm’s bankers, its bond holders, other creditors, preferred stockholders
and common stockholders. To make the apportionment simple, let’s divide the investors into just two
classes, into the common equity shareholders on one side and all others, namely the creditors or prior
claim holders of one kind or another, on the other, which means that:
$ Excess Total Return = $ Excess Common Equity Return + $ Excess Creditor Return
For practical purposes, excess creditor returns can be assumed to be very small, negligible in the
grand scheme of things, which means that most or all of the excess return generated in the business
goes to the shareholders. A company’s fixed income creditors are generally paid the contracted return
they expect, and with priority, so excess returns for the creditor class are hard to come by (the
exception being the extreme cases where a firm goes into bankruptcy and creditors suffer losses
alongside the shareholders). In all cases save the exception, then, changes in the value of the business
are passed intact, or almost intact, to the shareholders, which means for practical purposes the
expression above can be rewritten as below:
$ Excess Total Return = $ Excess Common Equity Return
(TIR – COC) x Market Value = (TSR – COE) x Equity Value
To test this, we computed the excess returns both ways for the S&P 500 to see how close they
are. The excess total return is based on the firm’s TIR compared to its overall weighted average cost of
capital, times the market value of its debt and equity. The excess common equity return is computed
the same way except that it is based on the firm’s TSR over the period compared to its cost of equity
(COE) as the relevant benchmark, times just the common equity value at the beginning of the period.
The cost of equity is computed in the standard way, by adding a company-specific “beta” risk premium
on top of the prevailing long government bond rate. The excess common equity return is the overall
gain or loss that the holders of a company’s common shares realized compared to what they could have
expected to earn by investing the initial equity value in a stock portfolio of the same risk class.
Let’s revisit the calculation for Dow. Recall that Dow produced a total investor return of 10.9%
compared to a weighted average cost of capital of 4.5% on a $59.4 billion market value base, for an
excess total return of $3.770 billion. On the other side, Dow’s TSR that year was far higher—it was
16.6%—but that is gauged against a 6.2% cost of equity and is multiplied times a far slimmer common
equity value of $34.1 billion, for an excess common shareholder return of $3.568 billion. The excess
returns, although not identical, are very close, as predicted.
$ Excess Total Return = $ Excess Common Equity Return
( TIR – COC ) x Market Value = ( TSR – COE ) x Equity Value (10.9% – 4.5%) x $59.4 Billion = (16.6% – 6.2%) x $34.1 Billion
$ 3.3770 Billion = $ 3.568 Billion
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The chart below plots the excess returns for Dow for each year from 1996 to 2012 and shows them to
closely match every year (Appendix 1 presents the computations of the excess returns for Dow).
That’s one company. Let’s now see how well the two returns align across the S&P 500
companies for the most recent available trailing four quarter period (generally through the first quarter
of 2013 for December filers). Exhibit 1 plots the excess total returns from the business running left-right
and the excess common equity returns running north-south. Bear in mind once again that the excess
equity returns are computed from dividend yield and share price appreciation and the excess total
returns from the overall corporate free cash flow and the change in the firm’s aggregate enterprise
value. Despite taking two very different tacks, the excess returns are remarkably close computed the
two ways6. The slope of the regression line is 1.00, the R-squared is 99% using all S&P 500 companies
(on left) and is 97% and after eliminating the five largest and smallest return observations (on right)7.
Exhibit 1: Excess Returns Are Equal
6 The two series are not expected to align precisely for several reasons. First, as noted, TSR will increase when the value of the company’s debt
changes, but TIR ignores the wealth transfers among investors and measures the investors’ collective return. TSR is also influenced by the price at which common shares are repurchased (or are issued) over the measurement period, but TIR is the return for all investors even those who buy in or sell out at interim prices. These effects are real but apparently negligible in the grand scheme of returns, as the evidence shows. 7 The technique of setting aside the extreme largest and smallest observations, called “Winsorization,” is a legitimate statistics operation that
removes a misleading degree of correlation between the variables (or a misleading absence of correlation if the extreme observations are out of synch) by enabling normal observations to dominate the regression line. In this case, it makes little difference – the extreme observations and more normal ones all fall on essentially the same line. The most extreme lower left observation is Apple.
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The results are no aberration. The excess return series were highly correlated each year from
2003 to 2012 and for the Russell 3,000 public stock universe as well as the S&P 500.
The evidence confirms that the logic and derivation work, and that the total excess returns
earned in the business predominately show up as the total excess returns for the shareholders, as is
expected. For all practical purposes, the two are equivalent, which means that the fundamental driver
of any company’s total shareholder return is the total investor return earned in its business activities.
The message is, maximize business value and the shareholders who own the business will be well
served.
The TSR dependence on TIR can be expressed even more directly by equating the excess return
formulas and solving for TSR, which produces the following expression (with the figures for Dow plugged
in—again, the equation is not exact but it is a close approximation):
TSR = COE + ( TIR – COC ) x (Market Value of Debt + Equity)/(Market Value of Equity) = 6.2% + (10.9% – 4.5%) x ( $59.4 Billion / $34.1 Billion ) 16.6% = 6.2% + ( 6.4% ) x 1.74x The formula says that if a firm’s TIR equals its COC (that is, if the firm’s business generates a
return on the firm’s market value that just matches the firm’s overall cost of capital), then the entire
second term drops out and the TSR earned for shareholders will equal the cost of equity. This is
sensible. Every firm’s TSR should be based off its cost of equity as a starting point and strategic target.
If stock prices are set by discounting expected equity cash flows at the cost of equity capital, as finance
theory suggests, then as time passes, and the expected cash flows are more or less realized,
shareholders should realize a return equal to the cost of equity as the discounting process is reversed—
not stock by stock and not in each period, but over time and in diversified portfolios where forecasting
errors tend to cancel and expectations are realized. This insight suggests that the TSR formula we
derived is sensible and intuitively appealing in that it corresponds to an “efficient” market that does not
randomly price stocks but that sets stock prices to provide a “beta” return for bearing risk.
The formula also explains how TSR should react when the business performance deviates from
expectations. It says, for example, that if a firm’s TIR exceeds its cost of capital, that is, if the business
performance in a period exceeds long-run return expectations, as is the case with the Dow example,
then the premium return is added to TSR, but with leverage—after multiplying it times the ratio of the
firm’s entire market value to its equity market value. The leverage cuts both ways, of course. When TIR
falls short of COC, the deficit return is amplified into an even larger discount on the slimmer common
equity base.
The chart below demonstrates this for Dow. It plots the firm’s total shareholder return each
year in red versus the total investor return earned in the business in blue. As predicted, Dow’s TSR
tracks but exaggerates the underlying swings in business performance. In 2008, for example, when
Dow’s business generated a negative 41.3% return, shareholders lost 57.5% of their wealth. The erosion
in shareholder value ended up dramatically increasing the firm’s leverage. The ratio of the firm’s overall
market value to its equity value ended 2008 at 1.9x, up from 1.3x the year the before. Good thing, too,
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because in 2009, Dow’s business (and the stock market) recovered smartly and yielded a stunning 64.6%
return (albeit on a much depressed market valuation base), which when magnified by the leverage, gave
shareholders a nearly 87.1% return (to put that in perspective, though, the two year shareholder return
was still negative—almost -20%—which indicates why it is essential to view TSR over longer time
frames).
The TSR formula presented and illustrated above is directly derived from the equality of excess
returns that has already been established, and thus it must also be true simply as a mathematical
derivation. Still, it is worth verifying with data since it explains TSR directly rather than indirectly. In
Exhibit 2, TSR, as computed the conventional way from dividend yield and price change, is plotted going
left to right, and TSR as predicted by the derived formula using TIR is plotted north and south, for the
S&P 500 companies for their most recent trailing four quarter period. The left chart covers all 500
companies; the right chart excludes the five most positive and five most negative returns.
Exhibit 2: TSR Exposed – It’s COE plus a Leveraged Return from the Business
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The regression is once again almost a perfect fit8. This proves yet again and perhaps more
explicitly that TSR is simply a math function of the TIR earned in the business, amplified by leverage. The
question now is, what determines TIR?
Step 2. TIR comes from earning EVA and increasing MVA
So far TIR has been described and computed as the free cash flow yield and the capital gain on
the firm’s market value. With a few substitutions, a firm’s TIR can be shown to come from its EVA profit
and the change in its aggregate MVA. To do this, we will use a few symbols and be a little more formal.
Once again, a firm’s TIR is defined to be the free cash flow (FCF) its business generates plus the
change in its overall market value (ΔV) divided by its market value at the start of the period (V0), or in
symbols, TIR = (FCF + ΔV)/V09. Now let’s play the substitution game.
Recall that a company’s free cash flow (FCF) is the difference between what it earns and what it
invests. It is the NOPAT (net operating profit after taxes) earned on the income statement less the
period change in the capital employed on its balance sheet, or in symbols, FCF = NOPAT − ΔCapital.
Also, since EVA = NOPAT − Capital Charge, we can rearrange the terms to see that NOPAT =
Capital Charge + EVA. Plug in:
TIR = ( FCF + ΔV)/V0
TIR = (NOPAT − ΔCapital + ΔV)/V0
TIR = (Capital Charge + EVA − ΔCapital + ΔV)/V0
The last substitution is to recognize that a firm’s MVA, its market value premium to its invested
capital, can be represented by V − Capital, which means that the change in MVA can be written as the
offsetting changes in the two components, or ΔMVA = ΔV – ΔCapital. Substituting in, TIR reduces to:
TIR = (Capital Charge + EVA + ΔMVA )/V0
The revised formula shows that the total return a firm generates for all its investors from its
business performance is a strict math function of three factors that all come from the EVA model.
The first is the capital charge as a yield on the firm’s beginning value. Since the capital charge is
the weighted average cost of capital times the capital invested in net business assets, this factor builds
in a base rate of return to give the investors the return they expect for bearing risk (just as the expected
cost of equity is built right into TSR). Again, that’s sensible. As time passes and business performance
unfolds, investors will expect to earn a risk-adjusted return from the time value of the money and from
8 It’s not quite as perfect a fit because the prior regression correlated absolute money gains and losses, which introduces a size bias due to the
fact that larger companies tend to have larger gains and losses than smaller companies. A size connection can sometimes radically inflate the real significance of the relationship being studied, but that is not really true here. Even the size-adjusted, the TSR to TIR correlation is very highly significant. 9 In practice it gets a little more complicated when we consider excess cash holdings that are excluded from the definition of FCF but that can
also be paid our or accumulated in a period, or if a company spins off a major line of business, and so on. But those are details that do not alter the insights.
Page | 12
reversing the discounting process. It comes from how they priced the stock in the first place—not as the
simple sum of EVA profit they forecast, but as the discounted present value sum of the EVA they
forecast. This being the case, corporate and shareholder returns always need to be judged relative to an
appropriate benchmark return—or cost of capital if you will—since market prices always factor in the
expected returns from the get go. This only reinforces the importance of measuring corporate profit net
of the capital charge, for only by earning the charge can management hope to meet market
expectations at a minimum.
The second factor in the total business return formula comes from earning EVA, from producing
a true economic profit above the cost of capital. It’s one for one—the more EVA the firm earns, the
higher its total investor return will be (and that will be magnified by leverage into an even higher total
shareholder return).
The third factor is the return that comes from expanding owner wealth, from increasing the
firm’s franchise value, from achieving and positioning the company for a greater abundance of positive
NPV investments. In short, it comes from increasing MVA.
In principle—and this will be tested in the third proof step—MVA increases when the expected
present value stream of EVA increases, either from an increase in current EVA or from revised
expectations about future EVA improvements. In other words, the true drivers of shareholder returns,
beyond just passively reversing the discounting process, are earning and increasing EVA and increasing
expectations for earning even more EVA.
At this stage we have derived two equivalent expressions for TIR, the one based on cash yield
and capital gain, and the other flowing from EVA, as follows (with Dow’s 2012 figures plugged in below,
and presented over the full history in Appendix 2):
Cash Flow Formula
TIR = ( FCF + ΔV )/V0
10.9% = ( $1967.5 + $4483.8 )/$59430.5
EVA Formula TIR = (Capital Charge + EVA + ΔMVA + FCF Adjustment )/V0
10.9% = ( $2665.7 + $597.2 + $2932.4 + $256.0 )/$59430.5
The EVA version makes it apparent in a way the cash flow formula does not that the real key to
driving shareholder returns is not to generate and pay out cash. It is to invest and grow EVA—as much
as possible.
On a technical note, the EVA formula for TIR includes a term, called FCF Adjustment, which is
needed to reconcile the reported financials that are used to compute EVA with the firm’s actual cash
flows. One example of why this is necessary would be when a company takes a direct charge to its
retained earnings to retroactively conform to a new accounting pronouncement. In that case,
computing capital spending as the simple period to period change in the company’s book capital
understates it. To correct for this, the non-cash charge to retained earnings is folded back into the
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change in book capital to estimate the company’s capital expenditures for the period, and it is thereby
correctly deducted from the company’s Free Cash Flow. To ensure that EVA and cash flow equate, non-
cash charges to retained earnings like that must also be deducted from the EVA return, as is shown for
Dow. This is not a conceptual deficiency with EVA but just a grubby reality of the accounting data that is
used in this analysis (which comes from Compustat, a service of Standard & Poors’).
The derivation shows that the two formulas are conceptually and mathematically equal, and
that TSR is in fact determined by EVA and the change in MVA. But as added confirmation, we computed
TIR both ways for the S&P 500 companies for the 2012 fiscal years and plotted the results in Exhibit 3.
This time the R-squared is 100%! The two are indeed identical, which now leaves only one unanswered
question to fully explain TSR. What financial performance measure best accounts for the change in
MVA? Put differently, what is the real key to creating wealth?
Exhibit 3: TIR is Exactly the Same Both Ways
Step 3. EVA is the Real Key to Creating Wealth and Driving Shareholder Returns
As Fortune’s editors put it in a September 1993 cover story, EVA is “the real key to creating
wealth.” It’s the real key because EVA mathematically discounts to the net present value of cash flow,
or what is the same, to the MVA of an entire company. To see why, look at this as a banker would.
Suppose a banker lends you $1,000, and then says, “You have two choices. You can pay back the $1,000
right now or over time. For example, you could pay back $100 a year over ten years, and as long as you
also pay a market rate of interest on the outstanding balance, the present value is same as retiring the
full $1,000 today.”
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What is the analogy? Free cash flow deducts capital investment as a company spends it, right
up front. It puts all the pain first, and all the payoffs later. EVA, in contrast, deducts capital investment
over time, through cost of goods sold flowing out of inventories and with the depreciation of the
investments in fixed assets. But in exchange, EVA also deducts in each period the market rate of
interest—the cost of capital —on the outstanding and as yet un-recouped capital balance appearing on
the balance sheet. The present value is always the same either way. Yet EVA is better than cash flow as
a measure of value (and as a management tool) because it better matches the timing of cost and
benefit. It spreads out the total principal and interest charge for capital over the time horizon that the
capital is expected to contribute to profits, just is as if the balance sheet assets have been rented, which
means that the period-to-period change in EVA is a far more reliable indication of whether firm’s net
present value, and hence its MVA, is expanding or contracting.
The formal statement is that a company’s MVA at a point in time is governed by a discounting of
its expected future EVA profit. Even if investors are actually projecting and valuing cash flow, it will still
be true that MVA is governed by EVA as well, for cash flow and EVA discount to the same net present
Exhibit 4: EVA and MVA for Autozone
Autozone, a specialty retailer of auto
aftermarket products, illustrates the link between EVA
and MVA that is expected. The top chart plots
Autozone’s year-end market value, essentially its
enterprise value, given its share price, versus the capital
invested in its net business assets; the bottom chart
plots the resulting MVA against the EVA profit the firm
earned each year. From 1997 to 2012, the firm’s MVA
increased from $3 billion to $15 billion and in lockstep
with a notable and sustained uptrend in EVA profit.
MVA, moreover, tended to closely mirror the
movements in EVA profit. EVA thus has been a very
good profit performance proxy for wealth creation and
the generation of TSR at Autozone.
MVA and EVA moreover certify that the
company’s performance and governance have been
exemplary. One reason: Autozone has been an EVA-
focused firm, and bonuses are tied to increasing it.
Another reason is that management increased the firm’s
franchise value through logistics excellence, optimizing
store locations, merchandising mix, advertising and
pricing policies, and the like. Increasing MVA does not
occur in a vacuum. It stems from enhancing business-
model productivity and scaling profitable growth—
things that ought to be at the top of any board’s agenda,
and which are promptly and accurately registered in the
growth in EVA profit.
EVA/MVA charts for 9,000 companies can be
viewed at www.evaDimensions.com/EVAvsMVA
Page | 15
value as a purely mathematical matter. Because of this, the change in MVA over a period of time should
be highly correlated with the change in EVA over that time (refer to Exhibit 4 above for an example using
Autozone).
The correlation will not be perfect, though, because the MVA at the end of a period, which
determines the change in MVA over the prior period, will be based on the forecast for EVA extending
beyond that period. In other words, MVA is influenced by changes in the firm’s business prospects
extending well into future periods, and past trends in EVA can never fully predict that.
The correlation between changes in EVA and changes in MVA should increase as the observation
period is extended. A longer track record smoothes cycles, increases investors’ confidence in
established trends, and generally removes noise from the data. EVA should thus be a better MVA
predictor over a five-year interval than it is year to year, for instance, and it is. The correlation also will
vary by line of business and depending on how much the change in profit performance over a prior
period can be confidently extrapolated into future periods. One would expect, for example, and indeed
one finds, that changes in EVA are a relatively weak predictor of the change in MVA for oil and gas
drillers, for real estate firms, and for start-up biotech firms—for companies that have considerable value
in the ground, on the ground or in a developmental pipeline but which only flow into profits with a
considerable lag. That is not just a problem for EVA, but for any financial measure. On the other side,
EVA also should be a relatively better predictor of MVA, and it is, for consumer staples and products
where brands, once established, can create an enduring value.
This is the theory. Now to the test. We began by computing the size-adjusted change in MVA
for the S&P 500 so that companies that vary in size could be fairly compared on the regression scale.
Specifically, we calculated a statistic called MVA Momentum, which is the change in MVA divided by the
sales in the base period. In effect, it is the rate at which a firm expanded its franchise value relative to
the original size of its franchise. To capture a sufficiently long horizon, MVA Momentum was computed
over a five-year interval. A company’s 2012 MVA Momentum was computed by taking its MVA as of the
end of 2012, given its stock price, shares outstanding, and capital base at that time, minus the MVA it
recorded five years before, at the end of 2007, given its stock price, shares outstanding, and capital base
at that time, and dividing by its sales for 2007. Again, it measures the rate of growth in owner wealth
and franchise value, scaled to the sales size of the company. This is the variable we want to explain. The
sample covered was once again the S&P 50010.
The first and most promising candidate to explain MVA Momentum is EVA Momentum, which is
calculated in the same way. It is the change in EVA over the five-year interval, divided by the sales in the
2007 base period. It measures the point-to-point rate of growth in economic profit, scaled to the sales
10
Starting with the S&P 500, we removed 18 firms that lacked a full five years of data (such as Mead Johnson and Kraft Food Group that were
spun out of larger companies), and 22 firms that had undertaken large spinoffs (such as Tyco), leaving 460 firms. Then, we removed a set of long lead time firms, which covered all 14 real estate firms, the one biotech firm in the S&P500 with revenues under $5 billion, and 11 small and mid-tier oil and gas firms with revenues under $10 billion, leaving a total of 435 firms in the study. The data set was further pruned through Winsorization to eliminate outliers (firms with variable observations that were outside a plus and minus three standard deviation band around the average) in order to focus on the more normal observations. Lastly, in each regression we removed “misfits,” the twenty firms that had the largest divergence between the percentile rank of MVA Momentum and the rank of the variable being regressed. Refer to Appendix 4 for more details.
Page | 16
size of the company. EVA Momentum measures the growth rate in quality earnings, not total earnings,
and thus it should best explain the growth in MVA, or MVA Momentum. The other candidates examined
are:
Net Income Momentum (measured the same way, as the change in reported net
income before unusual items, divided by base period sales)
EPS Momentum (the change in basic EPS, excluding unusual items, times the number of
shares outstanding at the end of the base period, divided by base period sales. It
measures the growth rate in the net income attributable to an investor who held all the
shares outstanding as of five years ago while suffering dilution from new share
offerings and without participating in share buy-backs over the subsequent five year
interval; unlike growth in EPS, EPS Momentum is meaningful even when base period
EPS is negative or negligible)
EBITDA Momentum (the same, measured as the change in the firm’s EBITDA/base
period sales)
Change in EBITDA Margin (EBITDA/Sales in 2012 less the ratio in 2007)
Sales Growth Rate (same, the change in sales/base period sales)
Free Cash Flow Generation (same, cumulative five-year FCF/base period sales)
Return on Capital (NOPAT/Average Capital, in the latest period), and lastly
Change in Return on Capital over the five-year interval
All the candidate measures (except the return measures and the change in EBITDA margin) are
scaled by base period (2007) sales in order to align with MVA Momentum, which is also scaled by sales
in the base period. The variables were regressed one by one against MVA Momentum in three ways.
The first used the raw values. In the second, the variables were first ranked and the regression was
performed on the percentile values. The third also used the percentile rank values but with the added
requirement that the regression pass through the origin, that is, that the zero percentile scores for both
variables must be the starting point on the regression line.
The percentile regressions test the ability of each variable to rank order MVA Momentum as
opposed to literally predicting each observation. Requiring the percentile regression to pass through
the origin sensibly asks how well the percentiles scores line up when they are forced to intersect at the
starting percentile ranks and not arbitrarily along the way. That is the strictest test of alignment and will
be accorded the most significance11. After all, ISS will use TSR to rank pay versus performance versus
peers, so the real question is which corporate performance variable is best rank correlated with MVA
Momentum and thus TSR. The slope of that regression line will also be telling. The closer to one it is,
the more MVA Momentum and the explanatory variable are aligning all through the percentile ranks.
11
Forcing the regression to pass through the origin can result in negative R-squared. That is because R-squared is measured relative to the
assumption no correlation exists between the two variables, and the squared errors against a flat line are summed as the reference deviation. If a regression line forced to pass through the origin leads to a greater sum of squared errors compared to the actual observations than the reference sum, then the R-squared of that regression line is negative. It is worse than assuming there is no correlation at all, which is the case with EBITDA Momentum, FCF Generation, Return on Capital, and Sales Growth.
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The findings are summarized in the table and chart below (the regression plots for all the variables are
presented in Appendix 3, and details of the statistical analysis are presented in Appendix 4).
Exhibit 5: EVA is Really the Key to Creating Wealth
The findings are as follows:
Generating “free cash flow” net of investment spending does not matter. It is
consistency uncorrelated with creating wealth and driving TSR, because the market does
not want cash, it wants investments that will grow value. A good example has been
Amazon, which poured capital into EVA-positive growth over the past five years, leading
to a starkly negative FCF but a very strong stock market and MVA performance.
Ironically, the cash flow measure that is projected and discounted to measure value, and
which appears in the definition of TIR, is almost completely uncorrelated with whether
companies are actually creating value and generating an outstanding shareholder
return. The conclusion is clear: Boards should never pay management to generate cash
flow12.
12
A private company or private equity company may feel it is wise to pay managers to generate free cash when cash is limited. But that is
blunt instrument that ends up slaying the innocent with the guilty. It discourages all investment in a period regardless of merit. A better solution is to reward management for increasing EVA, but where EVA is measured using an artificially inflated cost of capital—up to several percentage points over its true public market rate. Raising the rate sweats more cash out of balance sheet assets and cuts off at the knees projects that would otherwise be accepted. It directly attacks the problem that capital is extra scarce by making it extra costly rather than
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Earning a high return on capital is no guarantee of stock market success. The only rate-
of-return variable that matters at all is increasing ROI. The level of ROI is largely known
and in the stock price. It’s the improvement in return that matters, but it is not all that
matters. Growth matters, too, of course, and it becomes an even more important
consideration over longer time horizons like the five-year interval examined here. In
any form, level or change, ROI is demonstrably a far less effective valuation metric than
EVA. Boards should abandon ROI. It is a suffocating measure that stifles innovation and
deters initiative and stops profitable growth in its tracks.
Growth matters, but sales growth is apparently a very poor measure of the growth that
counts – it can be manufactured by bulking up on operating costs and investments.
Despite its popularity among the private equity crowd, EBITDA is a very poor measure of
wealth creation and at its best not half as good as EVA. EBITDA is blind to earning a
decent return on invested capital, to the necessity of replacing wasting assets, to paying
taxes, to covering investments in acquisition goodwill, to a firm’s pension funding status,
and a lot more. It is truly earnings before many things that count.
Net Income growth is hands down better than EBITDA. At least it factors in
depreciation, taxes and borrowed money interest expense as legitimate business costs
that EBITDA blithely ignores. But it too has blind spots. It does not set aside a return for
the shareholders, and it is riddled with accounting distortions that EVA repairs.
Though closely related, EPS Momentum provides a notable improvement on Net
Income Momentum because it does account for the cost of equity capital in a way,
through the dilutive or accretive effects of issuing or retiring shares over the interval.
However, it accounts for the cost of capital rather clumsily, episodically, and
incompletely—it ignores the cost of using retained earnings to finance growth. Also,
from a practical standpoint, it cannot be computed at a business unit or division level
and cannot be used in modeling the economics of individual business decisions. And
like net income, it is subject to the foibles of reported accounting.
Taking a big step forward, the clear winner is EVA Momentum. Driving growth in real
economic profit after setting aside a priority return for the owners and cleansing
accounting distortions is indeed the real key to creating wealth and the true driver of
TSR. Moreover, unlike EPS, it can be computed and managed within the lines of
business. It can be projected, analyzed and discounted to help line teams to measure
and improve the NPV of their plans, projects, acquisitions and decisions. It is not just an
elitist corporate measure. It’s a boots-on-the-ground measure that operating teams can
use to run their businesses in ways that directly contribute to increasing the corporate
TSR.
EVA Momentum not only has the highest R-squared across all regressions. It is by far the best at
the percentile regression, which means it’s the very best measure to rank order TSR. Moreover, the
slope of the EVA Momentum percentile regression with MVA Momentum is exactly 1.0 where all the
attacking the cash flow symptom. Put simply, never ration capital, charge for it at a market clearing rate, even if the market for capital is established inside the company.
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other measures have slopes less than 1.0. EVA Momentum is not only the best at explaining the rank
order of wealth creation. It is the most correctly aligned with it as well.
The following examples deal with instances where performance measured by EVA Momentum
differed significantly from other measures. In discussing them, I explain why the answers provided by
EVA are more economically sensible and, as a result, track MVA and TSR more closely.
Consider Amazon, where EVA increased while EPS decreased. As depicted in the chart below,
Amazon’s EVA (the blue line plotted on the right scale) steadily expanded, rising from $0.5 billion to near
$1.4 billion over the latest five year period covered in the study. MVA, depicted as the gray bar below,
also increased in each of those years and ended $80 billion higher than at the start.
Yet, as is presented in the table below, Amazon’s EPS tumbled in the last three years and
concluded the most recent year with a $0.24 a share loss—quite contrary to the remarkable
improvement in its MVA and outstanding TSR. The prime reason Amazon’s EVA grew as its reported EPS
shrank is that R&D had been running at around 5.0% - 5.5% of sales, but in the two most recent years
the spending reached nearly 8% of sales (see lines 41 and 42 in the table below). Ad spending, too, rose
from about 2% of sales in the early years to 3% of sales in the last two—and that was on a far larger
sales base (see lines 44 and 45). With EVA, the spending hikes were amortized (with interest) into
future periods13 (the idea being to better match cost and benefit, to discourage management from
opportunistically cutting the spending to make a short-term earnings goal, and specifically to handle
situations like this) whereas they were expensed according to GAAP accounting rules.
13
The default treatment, which was used to compute EVA in this study, is to write off R&D as an earnings charge over 5 years and ad spending
over three years (with interest at the cost of capital applied to the unamortized balance), except that the amortization periods are 10 years and 5 years respectively, for pharma and biotech companies.
Page | 20
The amortized charge to EVA, even including the interest on the prior unamortized spending,
was about 6.3% of sales in the most recent period (the sum of lines 40 and 43 above) as compared to a
book profit charge of 10.8% of sales ( the sum of lines 41 and 44 above). The 4.5% difference is why EPS
recorded a loss and EVA a win. EVA simply does a better job than EPS of distinguishing investments
from expenses, and more correctly measures the true period cost and real profit performance of
companies like Amazon that are accelerating investments in intangible assets and proprietary
capabilities and brand strength to enhance their long-run value. Netflix provides a similar example and
is reviewed in Appendix 5.
Another distortion occurs when EVA goes down as EPS goes up, which is fairly common. A total
of 198 companies in the sample universe produced significant EPS Momentum, defined as Momentum
above 2.5% over the five years (or better than a 0.5% average per annum). Of those, 33 firms, or one
out of six, produced a negligible EVA Momentum or worse. Nineteen had very modest EVA growth,
which was defined as less than 2% overall, as shown in the table below, and fully 14 of the 33 had
negative EVA Momentum. Of those 33 firms where EPS Momentum was strongly positive and
significantly overstated EVA Momentum, 23 suffered declines in MVA. They destroyed owner wealth
over the five years even as their EPS increased materially. Of the remaining 10 firms, 2 generated less
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MVA Momentum than the sample average, and 5 just matched the sample average. Only 3 of 33
managed to produce above average Momentum, and the highest was only 0.4 standard deviations
above the average, indicated by the Z-Score14. Clearly, the market was far more responsive to EVA than
EPS when setting the values for these stocks.
The largest discrepancy between EVA Momentum and EPS Momentum was exhibited by First
Solar. Its EPS grew from $1.87 to $5.74 from 2007 to 2012, equivalent to EPS Momentum of 48.3% over
the five years, or the 98th percentile of all firms. At the same time, its EVA plummeted from $81 million
to a $7 million loss, for a cumulative EVA Momentum of -13.7%, so low that it was in the third percentile
from the bottom of the S&P sample (see Appendix 6 for a fuller explanation of the EPS to EVA gap).
How did MVA respond? As was typical of the entire group, First Solar’s MVA followed its EVA down, not
its EPS up. In fact, its MVA fell so dramatically—from positive $17 billion to negative $2 billion—that it
was ranked as the very worst MVA wealth destroyer in the S&P15.
14
Z-Score is the number of standard deviations a variable is away from the average. It is computed by taking the observed value, less the
sample average value for the variable, and dividing by the standard deviation exhibited by the variable. 15
Although First Solar clearly demonstrates the superiority of EVA compared to EPS as a predictive metric, it was not included in the regression
statistics. Its MVA Momentum was so negative it was deemed to be an outlier and was removed from the study so as not to bias the statistics with an extreme observation. Including it would have tipped the scales way in favor of EVA as compared to EPS.
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How can a company’s EVA shrink or only grow very slowly as its EPS expands significantly? Said
another way, what accounts for the divergent results registered by the firms in the table above? The
reasons vary, but our analysis shows it includes the following:
1. Investments in business assets that exceeded the cost of borrowed money but that failed to
cover the full cost of capital, including the cost of retained earnings, was a fairly common
occurrence
2. Debt-financed share buybacks or acquisitions that boosted EPS but not EVA
3. Restructuring charges that were washed out of EPS but which were capitalized and turned
into capital charges against EVA
4. R&D and advertising spending that failed to generate a return sufficient to cover the
amortized cost, with interest, that was spread into subsequent periods under EVA but not
with EPS (essentially the opposite of what happened at Amazon)
5. Recognition of a deferred tax asset, which was assessed a capital charge in EVA but none in
EPS
6. A reduction in pension funding status which is converted into a cost of capital charge to EVA
but is either ignored or smoothed into profits over a very long time frame under EPS
Investors are generally well aware of these distortions and take them into account when setting
share prices, which is why EVA far more accurately tracks market prices than the reported earnings
figures do. Investment analysts, after all, actually analyze stocks and closely scrutinize the footnotes, a
firm’s efficiency in using capital, its leverage ratio, and the myriad factors that fundamentally influence
the quality of its earning and its intrinsic value, which is why when a company’s reported EPS increases,
and its EVA and MVA decrease, investors simply end up assigning a lower price/earnings multiple to the
stock in recognition that the true quality of its earnings is less than it is reported to be.
Let’s now contrast EVA Momentum with the change in Return on Capital (ROC), which was also
a relatively highly rated metric, by looking at a group of companies that generated nearly the same
improvement in return on capital but with very different EVA and MVA results. The eight companies
selected are presented in the table below. They were chosen because they followed each other in rank
when all firms in the sample universe were ordered by the change in return on capital, and because they
all managed to produce a substantial improvement in their returns, ranging from a 5.7% uptick to a 6.2%
ROI breakout over the past five years (equivalent to about one-half a standard deviation above the
average change, as indicated by the Z-Scores). In sum, all these firms managed to improve their return
on capital in a statistically meaningful and to an essentially equivalent degree.
Despite the ROI similarities, the MVA Momentum the firms produced over the five year interval
varied significantly, from a soaring 502% for Chipotle Mexican Grill to a loss of 11% for Valero. The
variable that far better explains the divergent valuation outcomes is EVA Momentum. The EVA
Momentum Z-scores—the number of standard deviations above or below the mean Momentum—were
+0.8 to +0.9 for the two biggest stock gainers (Chipotle and Monster Beverage), were negative for the
three weakest performers (Valero, Marriott, and AmerisourceBergen), and were +0.2 to +0.3 for the
three middle of the road stock performers. In short, the correlation of wealth creation was much
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stronger with EVA Momentum than with the change in the return on capital, because EVA Momentum
considers risk, growth, and the concluding level of the return on capital, and not just the change.
EVA Momentum performed so much better than ROI on these stocks because it not only
measured the improvement in profitability. It also implicitly incorporated the value added by the
growth the companies achieved. Indeed, it is the only corporate performance score that takes all
performance dimensions into account. It does not have the blind spots that other measures have. To
see this, let’s deconstruct EVA Momentum into two main drivers from which all others can be derived.
The first way to increase EVA and generate Momentum is to improve EVA Margin, that is, to increase
the ratio of EVA to sales by dropping more EVA to the bottom line out of top line revenues. That
indicates the firm has improved the productivity and profitability of its business model spanning income
statement efficiency and balance sheet asset management. It has done this through some combination
of what we like to call the three-“P’s”—price, product and process, that is, from earning and exerting
price power, from fielding an outstanding EVA-positive product line-up and benching losers, and from
process excellence, from running a tight ship with operational excellence and lean capital management.
Those are the types of initiatives that return on capital also tends to measure and emphasize. But EVA
Momentum goes beyond just measuring gains in productivity and business model profitability and
includes a second component which covers the value of profitable growth—a performance dimension
that ROI or profit margin in any form completely ignore.
The second way to increase EVA and drive Momentum is to generate positive sales growth at a
positive EVA Margin. This factor is literally the product of the firm’s sales growth rate times its
concluding EVA profit margin. For example, suppose a company realized productivity gains and
improved its EVA Margin from 4% to 5%, and suppose further that it generated 20% sales growth over
the period. Then its EVA Momentum would come in at 2%, with 1% coming from getting better, from
improving the EVA Margin, and the other 1% coming from getting bigger, from delivering 20% sales
growth at a 5% EVA Margin.
Take Monster Beverage, one of the companies in the table, as an example. Its EVA Momentum
over the five years was 17.5%. That’s the overall increase in its EVA as a percent of base period sales,
and it had to come from a combination of getting better and getting bigger. Surprisingly, its EVA Margin
shrank a bit. It dropped from 16.6% to 15.5%, for a 1.1% decrease that served to reduce its EVA
Momentum. As is typical of companies as they scale a highly profitable business formula, Monster had
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to give up a portion of its pricing power and business productivity as it grew. But Monster way more
than compensated for that shortfall with exceptional profitable growth. Its sales surged from $950
million to $2.1 billion, for 120% sales growth overall and a CAGR of 17.1% over the interval. The sales
that Monster added effectively added to its EVA at its concluding 15.5% EVA Margin rate, for a total
profitable growth contribution of 18.6% (120% x 15.5%). Put it together, and the Margin loss of 1.1%
plus the profitable growth gain of 18.6% fully accounts for the firm’s terrific 5-year EVA Momentum of
17.5%. Incidentally, over the same interval, Monster’s return on capital increased by 5.7%, impressive
on its own, but nevertheless a result that completely understates the firm’s actual accomplishment and
that entirely overlooks the true source of its phenomenal shareholder return.
In sum, unlike any other measure, EVA Momentum combines productivity gains and profitable
growth into one overall score of economic profit progress. It is uniquely capable of measuring the total
value added in a period from all sources. To recreate all the performance dimensions that EVA
Momentum packs into one grade you would have to blend together the change in return on capital, the
ending return on capital, the cost of the capital, and the firm’s growth rate in some unfathomably
complex and non-linear combination. Of course, that can never be done accurately and without
significant complexity. At the best you would end up with a highly imperfect and impractical proxy for
just using EVA and EVA Momentum to score performance and run a business.
As a final note, and as expected, the correlation between EVA Momentum and MVA Momentum
varies by sector. The table below presents the R-squared from percentile regressions forced through
the origin for 24 industry groups covering an expanded universe of the Russell 3000 companies.
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The weighted average R-squared across all the companies covering all the industry regressions
was 65%, which is about 7% better than the 58% R-squared recorded for the S&P 500 run. The modest
improvement is due to using more companies, to fitting each industry with its own regression run, and
to more extensively pruning the data set (approximately 23% of the eligible firms were eliminated as
either outliers or misfits in the industry regressions runs versus only about 8% (35 out of 434 firms) in
the S&P 500 run).
All but four sectors (real estate was not run and is not shown in the chart) had R-squared of
nearly 60% or above. The worst fit was with Banks and Insurance companies (which is understandable
given the tremendous turmoil in those lines), and the best fit, with a percentile regression R-squared
score of 88.5%, and a fitted line slop of 1.03, was with Food, Beverage and Tobacco firms, as is depicted
in the charts below, with EVA Momentum running left to right, and MVA Momentum on the north-south
axis (a full set of regression charts for the Food, Beverage and Tobacco industry, progressing from all
eligible companies to the pruned sample shown below, along with more data on the industry analysis in
general, appear in Appendix 7).
At this point, the formal proof is concluded. TSR has been shown to be a very strict and
predictable function of TIR—of the total return earned in the business. TIR has been shown to be a
mathematical function of reversing the cost of capital, of earning EVA, and increasing the firm’s MVA.
And the increase in EVA has been shown to be the very best proxy for increasing MVA, that is, for
increasing the net present value of the business and expanding owner wealth16. The data confirm it, and
is not unexpected. It is not a data-dependent finding, but an expected finding that the data verifies,
which makes it all the more convincing.
This is remarkably good news. For one thing, it validates ISS’s decision to use TSR to judge pay.
If shareholder returns were unrelated to economic profit and to increasing net present value—that is, if
they were random or if followed accounting metrics like EPS or ROI that don’t do a good job of providing
the right signals for management decisions—then grading performance with TSR would be questionable.
16
Appendix 8 provides a simulation of how TSR will react to changes in corporate performance based on the established regression model.
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But our research shows it makes sense. Granted, that is not obvious when TSR is expressed as a
dividend yield and capital gain. It is also not obvious or even true in the hurly burly of day-to-day or
even year-to-year trading activity, just as it is not apparent that a casino always wins. But when one
steps back and traces TSR to its roots, which are indeed economically grounded and firmly tied to EVA
and increasing NPV, and when one studies aggregate stock price behavior over a strategic horizon like
five years (as one might aggregate all the bets at a casino over a meaningful period), the logic of using
TSR to judge pay shines through.
The finding is also fantastic news for boards and management teams. It gives them a practical
way to manage for higher TSR. On the one hand, boards can reward managers for increasing EVA and
be highly confident that their pay plans will pass the ISS test17. But as important, EVA can help
managers to improve their firm’s TSR performance. EVA—or rather, EVA Momentum—is the bottom-
line score in a financial management framework that can provide every manager, and even rank-and-file
employees, with practical, easy-to-understand information they need to make the most value-enhancing
decisions.
The bottom line is this. If TSR is the question, EVA is the answer.
(The full report, What Determines TSR, can be downloaded at www.evaDimensions.com/EVA2TSR/report)
17
EVA can be used in bonus plans that accurately emulate the incentives of an owner. One example is a plan that pays a base bonus, which
brings total pay to market, plus a percent of the change in EVA over the prior year. This provides managers with the incentive to use EVA as a management tool and to make decisions that will increase it. The plan also pays managers for creating value by sharing the value they create with them, and not for beating a budget. It liberates managers to think and act like charged up owners and to collaborate as a team to deliver outsized EVA improvements over a strategic horizon. It also aligns pay to performance in accord with ISS’s goals. For instance, if EVA moves sideways and does not change, so that investors just earn the cost of capital they expect to earn on any newly invested capital, then the management teams just earns the base bonus they expect. But the more management is able to improve EVA, and thus improve the firm’s NPV and TSR, the bigger its bonus—which means that over time, management’s true bonus (the bonus over the base bonus) is perfectly aligned with the excess returns generated for the owners. In practice, the simple bonus plan outlined here can be modified to accommodate specific circumstances. For instance, the change in EVA could be measured relative to the projected increase in EVA that is baked into the stock prices of growth companies, and the change could be measured relative to peers for cyclical stocks. One way to do that is to hitch the bonus to the firm’s realized EVA Momentum compared to the EVA Momentum achieved by the median competitor firm.
Bennett Stewart is an expert in shareholder value and corporate
performance management, author of Best-Practice EVA (John Wiley &
Sons, March, 2013), and CEO of EVA Dimensions, a financial
technology firm that provides software tools, data bases and training
and support packages that help CFOs to test and automate Best-
Practice EVA and investors to make better buy-sell decisions.
He can be reached at [email protected]
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Appendix 3: S&P 500 Regression Plots
The left hand plots are from the regression of the raw variables against MVA Momentum, and
the right charts are percentile rank regressions, with the upper right result forced through the origin.
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Appendix 4: The Regression Analysis Details
Starting with the S&P 500, we removed the 18 firms below that lacked full five year data:
We eliminated 22 firms that had undertaken major spin-offs of business lines over the 5 year
interval. A spin-off can create such a disonctinuity in the data and variables that the remaining entity is
fundmentally incomarable to the starting one, which invalidates the statistical analysis.
The next step was to purge a set of firms that have long lead times between creating value and
its manifestation in financial performance. Specifically, we removed all 14 real estate firms, the one
biotech firm in the S&P500 with revenues under $5 billion, and 11 small and mid-tier oil and gas firms
with revenues under $10 billion, leaving a total of 435 firms.
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Next, following the standard procedure, called “Winsorization,” we pruned the data set to
eliminate companies with extreme MVA Momentum observations. We did this so as not to bias the
regression statistics with the influence of outliers and in order to isolate the ability of the financial
variables to explain the more normal MVA Momentum observations. The outliers are defined as firms
with observations falling outside a plus and minus 3 standard deviation band around the average. This
eliminated six companies (or 1.6% of the 435 remaining firms) with extreme positive MVA Momentum
and First Solar, the one with the very lowest MVA Momentum.
A company’s Z-Score is its company’s 5 year MVA Momentum minus the sample average divided by the standard deviation. It’s the number of
standard deviations away from the average. All companies with MVA Momentum Z-scores outside the range of + or – 3 were removed.
We also eliminated the outliers for each individual variable, i.e., we removed those companies
having the most extreme observations falling outside the three standard deviation band exhibited by
each variable. For example, the ten companies listed below were the EVA Momentum outliers, of which
two were also MVA outliers, for a net eight additional exclusions from the EVA Momentum regression
with MVA Momentum:
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Unfortunately, Apple and Priceline, which were exemplary creators of EVA and MVA, were
excluded from the study, but leaving them in would bias the regression statistics for companies that
were not at the extreme tail end of the distribution.
The eight companies listed below were EPS Momentum outliers, of which three were also MVA
outliers, for a net of five firms (1.1% of the sample) excluded from the EPS Momentum regression with
MVA Momentum:
Seven outliers were common to EPS and EVA, and only four in total were unique.
Lastly, in each regression we removed twenty “misfits,” or approximately 5% of the remaining
sample that were found to have the largest disagreement between their MVA Momentum rank and the
rank for the variable being regressed. For example, the tables below present the twenty companies that
had the largest discrepancy between the direction of their MVA and the direction of their EVA and their
EPS over the five years, and which were thus removed from the EVA and from the EPS regressions,
respectively. Removing the misfits enabled the more characteristic and typical relation with MVA
Momentum (and thus TSR) to shine through in the case of each regression.
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EVA Misfits
EPS Misfits
Nine of the twenty misfits were common to EVA and EPS. The average tracking error was 69
percentile points for the EVA “misfits” and 75 percentile points for EPS. The EPS misfits included
Amazon and NetFlix which were firms where EVA Momentum closely tracked MVA Momentum.
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Let’s examine a few of the firms that were excluded from the EVA regression. Monsanto was
rated to have one of the largest disconnects between its EVA Momentum and MVA Momentum over the
past years, and was removed as a “misfit,” yet that appears truly to be just a statistical aberration.
Monsanto’s MVA is plotted in the chart below as a gray bar, reflecting the share price at the end of each
reporting period, and its EVA profit earned over the prior four quarter period is plotted as the blue line,
on the right scale. Over the years a generally rising EVA tide has lifted the MVA ship, and movements in
Monsanto’s EVA have generally been reflected in its MVA, as expected. Yet, taking the five year point to
point change from 2007 to 2012, MVA was down and EVA was up. The disconnection is just a matter of
timing.
Newmont Mining also had one of the largest gaps between its EVA and its MVA over the past 5
years. Its EVA profit increased mightily while its MVA plunged. Newmont mines and sells gold. Its share
price at the end of each period and thus its MVA is affected by reserves in the ground and the spot and
future price of gold, which investors use to forecast its EVA profits. In contrast, its EVA reflects the
profits actually earned from production over the prior period and the average price of gold in the
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period. Thus, as the price of gold has precipitously dropped of late, Newmont’s MVA has taken it on the
chin, but its EVA over the trailing year was extraordinarily high due to the price of gold being quite high
on average over the year. Newmont, in short, is a statistical anomaly that disconnects the five year EVA
Momentum and MVA Momentum without in any way invalidating (nor affirming) the fundamental
connection between the two that should exist in the bulk of the EVA and MVA observations. It is justly
removed from the study.
Not all misfits are point to point anomalies. Another and fairly common occurrence is illustrated
by Computer Associates (CA) and Microsoft, where MVA shriveled as EVA impressively and rather
steadily increased. Crystal ball gazing investors have apparently grown increasingly concerned about the
long run sustainability of their business models in a world of disruptive technologies and clever and
restless competitors, and yet, in the near term, with established franchises and high costs for customers
to switch to alternatives, MSFT and CA have both been able to sustain considerable growth in their EVA
profits.
Still, a persistent EVA uptrend in the face of chronic MVA stagnation is an anomaly that appears
to invalidate EVA as the driver of MVA, at least for these two firms. But consider what happened at
Merck, as depicted in the chart below, as a model for what the market thinks is in store for the software
giants.
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Starting as far back as 2002, Merck’s MVA began to plummet (ultimately falling from $150 billion to
about $45 billion at present), and yet, in similar vein to MSFT and CA, its EVA continued on a positive
trend growth path over the next seven years based on scaling its established product portfolio.
Investors were apparently looking far down the road and becoming increasingly worried that Merck
would be unable to replace patent expirations with blockbuster drug discoveries, and they presciently
marked the share price down well in advance of the eventual and it seems now inevitable downturn in
EVA, which started in 2008-2009. Merck’s EVA has since fallen from a peak of $5.5 billion to $3.3 billion.
If one time-shifted Merck’s EVA 5 to 7 years leftward on the chart, back towards prior MVA
observations, then a close association between movements in EVA and movements and MVA would be
observed. EVA, no doubt, is still the key to creating—or destroying wealth—but the linkage does not
always play out over five years (even so, Merck is in the study, it is neither an outlier nor a misfit, and
the disassociation between its EVA and MVA is one of the observations that served to reduce the R-
squared of the EVA Momentum regression).
The insight is that firms like these that have strong franchises established through patent
protection or a widely-installed customer base can continue to generate EVA growth for some long time,
for five to seven years or longer, before the tectonic plates shift and the downturn the market has
forecast comes to pass. The implication is that CA and Microsoft are simply farther behind on the path
that Merck has already trodden, and that someday their EVA, too, will fall in line with their depressed
MVA valuations. Similar conclusions apply also to other tech firms on the misfit list, like Western Digital
and Intel, as well as medical technology companies Like Medtronic and Stryker shown in the charts
below that have managed to sustain growth in EVA while the sword of Obamacare dangles over their
heads.
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Remember, these are the egregious exceptions and not the rule. The rule is that the change in
EVA does the best job of any financial metric in explaining the change in MVA.
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Appendix 6: First Solar’s EPS Rises While its EVA and MVA fall
There are several reasons why First Solar’s EPS and EVA diverge so sharply. First Solar runs a
capital intense business that has become more intense. Its working capital investment, for example,
increased from about 40 to 130 days (line 36), which took the pre-tax cost of capital charge from 2.3% of
sales to 6.3% of sales (line 35). Yet, that charge is ignored in EPS. First Solar also took sizable
restructuring and impairment charges two years back, which have been carried forward as capital,
subject to a capital charge, in the most recent year—but that was ignored under EPS. The charge is a
component in the Corporate Charges line item (line 47), which increased in proportion to pre-tax EVA.
All told, First Solar is a textbook example of how EPS can misrepresent true performance and value.
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Appendix 7: Industry Regression Analysis
The industry regression analysis was expanded to cover the Russell 3000 stocks in order to bring
in a statistically meaningful group of companies to analyze in each industry. The universe actually
contained only 2,912 stocks as of the run (as is typical, some of the 3,000 companies that constitute the
index when it is refreshed each summer are lost over time due to bankruptcy, acquisitions, and such).
The available universe was pared to eliminate 431 firms that lacked 5 full years of data, 35 firms
that had undertaken major spin-offs of business lines, and 122 real estate firms that were simply
excluded from the study.
In addition, some 230 small firms—defined as companies with less than $50 million in revenues
in the most recent year or in the base year five years ago were excluded on the grounds that those firms
tend to have extremely volatile results and are not as actively followed.
The remaining 2076 companies entered the study.
In each industry regression, outliers—the firms with extreme EVA and MVA observations
outside the three standard deviation band—were excluded (which tended to eliminate only one or two
firms per industry), and a group of misfits were pared, too. The regression results are summarized in the
chart below:
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The misfits were defined as 20% of the firms remaining after removing the outliers in each
industry that had the greatest percentile error between their MVA Momentum and EVA Momentum
percentile ranks. As is shown in the regression results table above, a total of 77% of the 2076 eligible
firms entered the regression after trimming all the outliers and misfits, and was never less than 74%
coverage in any industry. The regression findings, in other words, generally apply to the middle 80
percent, the core group of the typical firms in each industry leaving out the top and bottom 10% outliers
in effect. The regression details appear in the table below.
The “validity index” is the ratio of the R-squared of the in-sector regression to the overall
weighted average R-squared of 65%. The higher it is, the better EVA Momentum was as a predictor of
MVA Momentum in the industry. Any index over 0.9 should be perfectly acceptable, which only
excludes four sectors, and for the ones excluded, no other measure would have done better.
The worst fit was with Banks and Insurance companies (which is understandable given the
tremendous turmoil in those lines), and the best fit, with a percentile regression R-squared score of
88.5%, and a fitted line slop of 1.03, was with Food, Beverage and Tobacco firms, which will now be used
to illustrate the in-industry regression.
All 58 of the qualifying companies in the industry are listed in the table below (after excluding
companies with insufficient data, with major spin-offs, and sales below $50 million in the base year or in
the ending year), along with their EVA and MVA Momentum statistics, and the percentile difference in
the rank between the two.
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The charts below illustrate the typical progression of the regressions as they proceeded through
the statistical analysis gristmill. The first included all of the 58 eligible firms shown above. The second
excluded the one outlier, Green Mountain Coffee, which racked up stupendous EVA and MVA. It was a
highly EVA/MVA aligned company, and dropping it reduced the R-squared materially. It is removed,
though, because one extreme observation should not inflate the results for the group (excluding it
dropped the R-squared by far more in the raw variable regression, which is an indication of why the
percentile rank order regression is fundamentally more stable and meaningful). The third regression
eliminated 20% of the remaining firms, i.e., 12 of the 57 companies, that had the least fit between their
EVA Momentum and their MVA Momentum in order to isolate the fundamental ability of EVA to track
with MVA for the core firms in the industry (the same procedure was applied in all industries, so that the
R-Squared’s can be compared for an indication of the relative strength of the relationships). The final
result is a near perfect alignment between EVA Momentum and MVA Momentum and TSR.
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All 58 Eligible Companies
57 Companies, Excluding the One Outlier (Green Mountain)
45 Companies, Excluding 1 Outlier and the 12 largest misfits
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Appendix 8: Simulating TIR
Our research has shown that the underlying determinants of TSR are TIR, which is the total
return earned in the business, with an overlay for leverage, and that TIR in turn comes chiefly from
earning EVA and increasing it as the best proxy for increasing MVA, the wealth of the owners. Let’s now
put that simple formula through its paces to see how shareholder returns should respond to changes in
corporate performance.
To begin, suppose a company is just breaking even on EVA and is not expected to improve it. In
that case, its MVA is zero and is not expected to increase, because its EVA is zero and not expected to
increase. In short, the firm’s market value should track along with the book value of its capital, and its
TIR is reduced to just the capital charge yield on its market value, as follows:
TIR = (Capital Charge + EVA + ΔMVA)/V0 = (Capital Charge + $0 + $0 )/V0 = (Cost of Capital × Capital + $0 + $0)/Capital = Cost of Capital
Since the firm’s market value matches the capital base in this case, the capital charge delivers a
cost-of-capital return on the value. TIR equals the cost of capital, every year, as expected. This is the
epitome of breaking even, and the classic base case.
Now suppose the company emits a one-time unexpected EVA uptick that has no impact on
expected future EVA and so none on its MVA or market value as well. Then the investor return that year
will increase by the one-time EVA uptick, but no more, and thereafter it will settle right back to the cost
of capital. Nonrecurring profits pay a one-time return dividend but just don’t move the market. There’s
an important message there. Managers should avoid spending a lot of time on generating one-time
gains since the market will assign them a multiple of one, then none.
Now suppose the firm’s EVA rises and investors consider the improvement permanent. The
firm’s MVA increases to incorporate the present value of the increase in EVA projected as a never-
ending perpetuity. The return soars whenever investors are first convinced this will happen. Depending
on the cost of capital, the MVA increase could be 7 to 20 times the increase in annual EVA.
Finally, suppose that investors not only expect the increase in EVA to be permanent, but they
also believe that management has positioned the company to continue increasing EVA for some time. In
this case, the firm’s MVA is turbocharged, as both EVA and future EVA growth rev up. The investor
return skyrockets when the long-run EVA trajectory is revised and impounded into the share price.
The bad news is that, after such a run-up, TIR will be based off a much higher market value. To
just earn the expected cost of capital and produce even just a zero excess return, the company will need
to continue to increase its EVA and hike up its MVA year over year just to stay on track with
expectations. But that is the way markets work. And it is another reason why it is sensible for ISS to
focus on TSR over longer horizons, like over 5 years, and why it is helpful to implement incentive plans