Composite IndicatorsInternational Workshop Tunis
Klaus Abberger
Swiss Economic Institute (KOF) of the ETH Zurich
Outline
Outline I
1 Business Cycles
2 Collecting Potential Indicators
3 Analyzing Individual Indicators
4 Composite Indicators
5 Publication of Composite Indicators
6 Forecasting with Indicators
Outline
Outline
1 Business CyclesReferenceTypes of CyclesTime Series
Hodrick-Prescott Filter (H-P Filter)
2 Collecting Potential Indicators
3 Analyzing Individual Indicators
4 Composite Indicators
5 Publication of Composite Indicators
6 Forecasting with Indicators
Business Cycles
Business Cycles
Mitchell 1927:
Reference Series
Reference Series
To assess the quality of business cycle indicators referenceseries are needed. Usually Gross Domestic Product (GDP) isused as reference. In the absence GDP of synthetic activitymeasures or indicators of key parts of the economy (e.g.industrial production) could be considered.
The reference series should
p be reliable
p contain a broad/important range of economic activity
p be in a quarterly or monthly frequency
Reference Series
Reference Series
To assess the quality of business cycle indicators referenceseries are needed. Usually Gross Domestic Product (GDP) isused as reference. In the absence GDP of synthetic activitymeasures or indicators of key parts of the economy (e.g.industrial production) could be considered.
The reference series should
p be reliable
p contain a broad/important range of economic activity
p be in a quarterly or monthly frequency
Reference Series
Reference Series
To assess the quality of business cycle indicators referenceseries are needed. Usually Gross Domestic Product (GDP) isused as reference. In the absence GDP of synthetic activitymeasures or indicators of key parts of the economy (e.g.industrial production) could be considered.
The reference series should
p be reliable
p contain a broad/important range of economic activity
p be in a quarterly or monthly frequency
Reference Series
Reference Series
To assess the quality of business cycle indicators referenceseries are needed. Usually Gross Domestic Product (GDP) isused as reference. In the absence GDP of synthetic activitymeasures or indicators of key parts of the economy (e.g.industrial production) could be considered.
The reference series should
p be reliable
p contain a broad/important range of economic activity
p be in a quarterly or monthly frequency
What is a business cycle?
What is a business cycle?
Types of Cycles
Types of Cycles
Different Cycles
p Classic Cycle
p Growth Cycle
p Growth Rate Cycle
Types of Cycles
Types of Cycles
Different Cycles
p Classic Cycle
p Growth Cycle
p Growth Rate Cycle
Types of Cycles
Types of Cycles
Different Cycles
p Classic Cycle
p Growth Cycle
p Growth Rate Cycle
Why is there a trend development?
Why is there a trend development?
What drives growth?
p Population
p Capital accumulation
p Technical progress
Why is there a trend development?
Why is there a trend development?
What drives growth?
p Population
p Capital accumulation
p Technical progress
Why is there a trend development?
Why is there a trend development?
What drives growth?
p Population
p Capital accumulation
p Technical progress
Time Series Composition
Time Series Composition
Additive Model
Additive components model:
yt = mt + kt + st + εt , t = 1, ...,n,
with
mt trend component
kt cyclical component (business cycle)
st seasonal component
εt irregular component
Trend estimation with Filters
Trend estimation with Filters
A conventional definition of business cycle emphasisesfluctuations of between about 1.5 years and 8 years. Longerfluctuations are regarded as trend. Shorter fluctuations containshort term fluctuations, wether effects, random effect,measurement errors etc.
One way to extract the smooth component and the businesscycle is the application of filters like the Hodrick-Prescott filterand the Baxter-King filter.
Example: Euro Area Manufacturing Production
Example: Euro Area Manufacturing Production
1995 2000 2005 2010
80
90
100
110
1991 1993 1995 1997 1999 2001 2003 2005 2007 2009 2011 2013
Index (2010=100)
Eurostat
Seasonal and working day adjusted
Example: Growth of Euro Area Manufacturing Production
Example: Growth of Euro Area ManufacturingProduction
1995 2000 2005 2010
−0.25
−0.20
−0.15
−0.10
−0.05
0.00
0.05
0.10
1992 1994 1996 1998 2000 2002 2004 2006 2008 2010 2012
AnnualMonthly
Example: Growth of Euro Area Manufacturing Production
Example: Growth of Euro Area ManufacturingProduction
1995 2000 2005 2010
−4
−2
0
2
1992 1994 1996 1998 2000 2002 2004 2006 2008 2010 2012
Standardized
AnnualMonthly
Example: Euro Area Manufacturing Production
Example: Euro Area Manufacturing Production
Outline
Outline
1 Business Cycles
2 Collecting Potential IndicatorsCharacteristics of good indicatorsSearch for potential indicatorsComposite IndicatorsWhat others do
3 Analyzing Individual Indicators
4 Composite Indicators
5 Publication of Composite Indicators
6 Forecasting with Indicators
Searching for Indicators
Searching for Indicators
Characteristics of good indicators:
p meaningful und reliable
p timely available
p after publication no big revisions
p leading or coincident for the business cycle, so that timelysignals are given
p stable relationship with the reference series
p clear signal with minor noise
Searching for Indicators
Searching for Indicators
Characteristics of good indicators:
p meaningful und reliable
p timely available
p after publication no big revisions
p leading or coincident for the business cycle, so that timelysignals are given
p stable relationship with the reference series
p clear signal with minor noise
Searching for Indicators
Searching for Indicators
Characteristics of good indicators:
p meaningful und reliable
p timely available
p after publication no big revisions
p leading or coincident for the business cycle, so that timelysignals are given
p stable relationship with the reference series
p clear signal with minor noise
Searching for Indicators
Searching for Indicators
Characteristics of good indicators:
p meaningful und reliable
p timely available
p after publication no big revisions
p leading or coincident for the business cycle, so that timelysignals are given
p stable relationship with the reference series
p clear signal with minor noise
Searching for Indicators
Searching for Indicators
Characteristics of good indicators:
p meaningful und reliable
p timely available
p after publication no big revisions
p leading or coincident for the business cycle, so that timelysignals are given
p stable relationship with the reference series
p clear signal with minor noise
Searching for Indicators
Searching for Indicators
Characteristics of good indicators:
p meaningful und reliable
p timely available
p after publication no big revisions
p leading or coincident for the business cycle, so that timelysignals are given
p stable relationship with the reference series
p clear signal with minor noise
Types of Indicators
Types of Indicators
Indicators can be divided into
p leading indicators
p coincident indicators
p lagging indicators
Types of Indicators
Types of Indicators
Indicators can be divided into
p leading indicators
p coincident indicators
p lagging indicators
Types of Indicators
Types of Indicators
Indicators can be divided into
p leading indicators
p coincident indicators
p lagging indicators
Potential indicators
Potential indicators
Potential leading indicators are classified to one of four types ofeconomic rationale, shown below, that can be used to assesstheir suitability as leading indicators.
p Early stage: indicators measuring early stages ofproduction, such as new orders, order books, constructionapprovals, etc.
p Rapidly responsive: indicators responding rapidly to changes ineconomic activity such as average hours worked, profits andstocks.
Potential indicators
Potential indicators
Potential leading indicators are classified to one of four types ofeconomic rationale, shown below, that can be used to assesstheir suitability as leading indicators.
p Early stage: indicators measuring early stages of production,such as new orders, order books, construction approvals, etc.
p Rapidly responsive: indicators responding rapidly tochanges in economic activity such as average hoursworked, profits and stocks.
Potential indicators
Potential indicators
p Expectation-sensitive: indicators measuring, or sensitiveto, expectations, such as stock prices, raw material pricesand expectations based on business survey dataconcerning production or the general economicsituation/climate e.g. confidence indicators.
p Prime movers: indicators relating to monetary policy and foreigneconomic developments such as money supply, terms of trade,etc.
Potential indicators
Potential indicators
p Expectation-sensitive: indicators measuring, or sensitive to,expectations, such as stock prices, raw material prices andexpectations based on business survey data concerningproduction or the general economic situation/climate e.g.confidence indicators.
p Prime movers: indicators relating to monetary policy andforeign economic developments such as money supply,terms of trade, etc.
Search for possible Indicators
Search for possible Indicators
The list of possible indicators should contain the followinginformation:
Indicator Source Notes Meaning Frequency Publication lag Revisions Date first publication
In column "Meaning" one should identify why this indicatorcould be important for the economy (e.g. is an important sectorwith high value added)
Later this table is expanded with results from statisticalanalyses.
Composite Indicators
Composite Indicators
The advantage of composite indicators over the individualcomponent series is that they achieve a better trade-offbetween responsiveness and stability. Composite indicatorscan be constructed to have fewer false alarms and fewermissed turning points than its individual components;moreover they tend to have more stable lead-times. Finally,the composites have the capacity to react to various sources ofeconomic fluctuations and at the same time can be resilient toperturbations affecting only one of the components.
What others do: OECD
What others do: OECD
Look at the different country indicators. There are various typesof indicators. E.g.:
p Production, stock of orders, employment, unfilled job vacancies,new car registrations, housing starts, nights spend in hotels
p business tendency surveys
p consumer surveys
p various price figures and share prices, terms of trade, exchangerate, silver price
p interest rates (spreads), bank credits
p indicators of other countries
.... and much more.
Purpose of the OECD Composite Leading Indicators
Purpose of the OECD Composite LeadingIndicators
The objective of the OECD Composite Leading Indicators is toprovide ”qualitative indicators of the business cycle outlook forthe short term future”.
So what means
p business cycle?
p qualitative?
p short term?
Purpose of the OECD Composite Leading Indicators
Purpose of the OECD Composite LeadingIndicators
The objective of the OECD Composite Leading Indicators is toprovide ”qualitative indicators of the business cycle outlook forthe short term future”.
So what means
p business cycle?
p qualitative?
p short term?
Purpose of the OECD Composite Leading Indicators
Purpose of the OECD Composite LeadingIndicators
The objective of the OECD Composite Leading Indicators is toprovide ”qualitative indicators of the business cycle outlook forthe short term future”.
So what means
p business cycle?
p qualitative?
p short term?
Purpose of the OECD Composite Leading Indicators
Purpose of the OECD Composite LeadingIndicatorsp Business cycle: Deviation from trend in GDP (since 2012,
before deviation from trend in industrial production).
p Qualitative: By design the indicators are primarily aimed atidentifying turning-points but also tries to identify phases in thecycle and, albeit to a lesser extent, the acceleration/decelerationof the business cycle. The qualitative focus means that theindicators are not optimized for precise numericforecasting. There is also a risk that one would intuitivelyinterpret higher peaks and lower troughs as stronger/weakergrowth. However, such conclusions may be misplaced, becausethe indicators are not optimized in this way.
p Short term: The indicators are designed to have a typical lead ofbetween 6 and 9 months. However, in practice the timeliness ofdata releases affects information lead times.
Purpose of the OECD Composite Leading Indicators
Purpose of the OECD Composite LeadingIndicatorsp Business cycle: Deviation from trend in GDP (since 2012, before
deviation from trend in industrial production).
p Qualitative: By design the indicators are primarily aimed atidentifying turning-points but also tries to identify phases inthe cycle and, albeit to a lesser extent, theacceleration/deceleration of the business cycle. Thequalitative focus means that the indicators are notoptimized for precise numeric forecasting. There is also arisk that one would intuitively interpret higher peaks andlower troughs as stronger/weaker growth. However, suchconclusions may be misplaced, because the indicators arenot optimized in this way.
p Short term: The indicators are designed to have a typical lead ofbetween 6 and 9 months. However, in practice the timeliness ofdata releases affects information lead times.
Purpose of the OECD Composite Leading Indicators
Purpose of the OECD Composite LeadingIndicatorsp Business cycle: Deviation from trend in GDP (since 2012, before
deviation from trend in industrial production).
p Qualitative: By design the indicators are primarily aimed atidentifying turning-points but also tries to identify phases in thecycle and, albeit to a lesser extent, the acceleration/decelerationof the business cycle. The qualitative focus means that theindicators are not optimized for precise numericforecasting. There is also a risk that one would intuitivelyinterpret higher peaks and lower troughs as stronger/weakergrowth. However, such conclusions may be misplaced, becausethe indicators are not optimized in this way.
p Short term: The indicators are designed to have a typicallead of between 6 and 9 months. However, in practice thetimeliness of data releases affects information lead times.
Building Blocks of OECD Composite Leading Indicators
Building Blocks of OECD Composite LeadingIndicators
p From the candidate component series factors like seasonalpattern, outliers, trend and noise (applying the HP-filter) areremoved.
p Candidate series are standardized.
p Assessment of components (turning point analysis withBry-Boschan procedure, cross-correlations).
p Calculation of composite indicator (equal weighting ofcomponents) and assessment (turning points,cross-correlations).
What others do: OECD
What others do: OECD
The Conference Board
The Conference Board
p This indicator approach originated in the mid-1930s at theNational Bureau of Economic Research (NBER) with the work ofWesley Mitchell and Arthur Burns
p Starting in the late 1960s, the U.S. Department of Commercebegan publishing the composite indexes
p In late 1995, the indicator program was privatized and TheConference Board took over
The Conference Board
The Conference Board
The Conference Board leading indicator for the U.S. uses thefollowing data:
p Average weekly hours, manufacturing
p Average weekly initial claims for unemployment insurance
p Manufacturers’ new orders, consumer goods and materials
p ISM new orders index
p Manufacturers’ new orders, non-defense capital goods excl.aircraft
p Building permits, new private housing units Stock prices, 500common stocks
The Conference Board
The Conference Board
p Leading Credit Index
p Interest rate spread, 10 year Treasury bonds less federal funds
p Avg. consumer expectations for business conditions
Standard deviations of monthly changes of the variables areused to calculate a weighted average of the variables.
The Conference Board
The Conference Board
The Conference Board coincident indicator for the U.S. usesthe following data:
p Employees on nonagricultural payrolls
p Personal income less transfer payments
p Industrial production
p Manufacturing and trade sales
The Conference Board U.S. Coincident Indicator
The Conference Board U.S. Coincident Indicator
www.conferenceboard.org © 2014 The Conference Board, Inc. | 16
5 recessions in 25 years
3 recessions in 30 years
Coincident index closely tracks GDP; two consecutive declines in GDP is not a good rule to define a recession
110
100
90
80
70
60
50
40
30
1960 1965 1970 1975 1980 1985 1990 1995 2000 2005 2010
The Conference Board Coincident Economic Index® (CEI) for the United States
0
0
-2
0
0
+1
0
0
+1
+1
-1
0
-6
0
+1
0
Note: Shaded areas represent recessions as determined by the NBER Business Cycle Dating Committee.Source: The Conference Board
The Conference Board U.S. Leading Indicator
The Conference Board U.S. Leading Indicator
www.conferenceboard.org © 2014 The Conference Board, Inc. | 15
Leading Economic Index summarizes and helps to predict the state of the economy and short term cyclical forces acting in and on it
Note: Shaded areas represent recessions. Source: The Conference Board
20
30
40
50
60
70
80
90
100
110
1960 1965 1970 1975 1980 1985 1990 1995 2000 2005 2010
The Conference Board Leading Economic Index® (LEI) for the U.S.The Conference Board Coincident Economic Index® (CEI) for the U.S.
01:301:11
90:791:3
81:782:11
80:180:7
73:1175:3
69:1270:11
60:461:2
Peak:Trough:
07:1209:6
Jun '14
-8 -6
0 0
-2 0
-9
0
0
+1
-15
-2
0
0-8
-3
-18
0
-1
0
-11
-1
-6
0
-21
-3
+1
0
+1
+1
The Conference Board
The Conference Board
Construction of Conference Board composite indicators. Thecomponents (variables) are
p Seasonal adjusted
p Deflated
p Volatility adjusted
p Aggregated
p In some cases trend adjusted (the leading indicator is adjustedto the trend of the coincident indicator)
p An index is calculated
KOF Economic Barometer
KOF Economic Barometer
Indicator for the Swiss business cycle. Relies strongly oneconomic tendency survey results, but not entirely. Uses Swissindicators and foreign indicators.
KOF Economic Barometer: History
KOF Economic Barometer: History
p 1976 Version
p Reference series: de-trended real GDPp Number of variables selected: 6 (construction, manufacturing
(2x), labour, money, stocks)
p 1998 Version
p Reference series: real y-o-y growth in GDPp Number of variables selected: 6 (all from Business Tendency and
Consumer surveys)p Variables were low-pass filtered and then the first principal
component was extracted
KOF Economic Barometer: History
KOF Economic Barometer: History
p 1976 Version
p Reference series: de-trended real GDP
p Number of variables selected: 6 (construction, manufacturing (2x),labour, money, stocks)
p 1998 Version
p Reference series: real y-o-y growth in GDPp Number of variables selected: 6 (all from Business Tendency and
Consumer surveys)p Variables were low-pass filtered and then the first principal
component was extracted
KOF Economic Barometer: History
KOF Economic Barometer: History
p 1976 Version
p Reference series: de-trended real GDPp Number of variables selected: 6 (construction, manufacturing
(2x), labour, money, stocks)
p 1998 Version
p Reference series: real y-o-y growth in GDPp Number of variables selected: 6 (all from Business Tendency and
Consumer surveys)p Variables were low-pass filtered and then the first principal
component was extracted
KOF Economic Barometer: History
KOF Economic Barometer: History
p 1976 Version
p Reference series: de-trended real GDPp Number of variables selected: 6 (construction, manufacturing (2x),
labour, money, stocks)
p 1998 Version
p Reference series: real y-o-y growth in GDPp Number of variables selected: 6 (all from Business Tendency
and Consumer surveys)p Variables were low-pass filtered and then the first principal
component was extracted
KOF Economic Barometer: History
KOF Economic Barometer: History
p 1976 Version
p Reference series: de-trended real GDPp Number of variables selected: 6 (construction, manufacturing (2x),
labour, money, stocks)
p 1998 Version
p Reference series: real y-o-y growth in GDP
p Number of variables selected: 6 (all from Business Tendency andConsumer surveys)
p Variables were low-pass filtered and then the first principalcomponent was extracted
KOF Economic Barometer: History
KOF Economic Barometer: History
p 1976 Version
p Reference series: de-trended real GDPp Number of variables selected: 6 (construction, manufacturing (2x),
labour, money, stocks)
p 1998 Version
p Reference series: real y-o-y growth in GDPp Number of variables selected: 6 (all from Business Tendency
and Consumer surveys)
p Variables were low-pass filtered and then the first principalcomponent was extracted
KOF Economic Barometer: History
KOF Economic Barometer: History
p 1976 Version
p Reference series: de-trended real GDPp Number of variables selected: 6 (construction, manufacturing (2x),
labour, money, stocks)
p 1998 Version
p Reference series: real y-o-y growth in GDPp Number of variables selected: 6 (all from Business Tendency and
Consumer surveys)p Variables were low-pass filtered and then the first principal
component was extracted
KOF Economic Barometer: History
KOF Economic Barometer: History
p 2006 Version
p Reference series: real y-o-y growth in financial, constructionand core GDP (3 modules)
p Number of variables selected: 25p For each module the first principle component was extractedp Aggregate is filtered using end-point stable Direct Filter
Approach (DFA) of Wildi (2008)
KOF Economic Barometer: History
KOF Economic Barometer: History
p 2006 Version
p Reference series: real y-o-y growth in financial, constructionand core GDP (3 modules)
p Number of variables selected: 25p For each module the first principle component was extractedp Aggregate is filtered using end-point stable Direct Filter Approach
(DFA) of Wildi (2008)
KOF Economic Barometer: History
KOF Economic Barometer: History
p 2006 Version
p Reference series: real y-o-y growth in financial, construction andcore GDP (3 modules)
p Number of variables selected: 25
p For each module the first principle component was extractedp Aggregate is filtered using end-point stable Direct Filter Approach
(DFA) of Wildi (2008)
KOF Economic Barometer: History
KOF Economic Barometer: History
p 2006 Version
p Reference series: real y-o-y growth in financial, construction andcore GDP (3 modules)
p Number of variables selected: 25p For each module the first principle component was extracted
p Aggregate is filtered using end-point stable Direct Filter Approach(DFA) of Wildi (2008)
KOF Economic Barometer: History
KOF Economic Barometer: History
p 2006 Version
p Reference series: real y-o-y growth in financial, construction andcore GDP (3 modules)
p Number of variables selected: 25p For each module the first principle component was extractedp Aggregate is filtered using end-point stable Direct Filter
Approach (DFA) of Wildi (2008)
KOF Economic Barometer: Construction of the 2014 Version
KOF Economic Barometer: Construction of the2014 Versionp Objectives
p No longer use a filter for smoothingp Broaden the set of underlying time seriesp Define a standardized procedure to select variables
(Automatize and regularly apply the variable selectionprocedure)
p Two production stages
p Variable selection procedure
p Choose business cycle conceptp Define reference seriesp Pre-select the pool of potential variablesp Fix the automated selection procedure
p Construction of the leading indicator (extract the first principlecomponent from the selected variables)
KOF Economic Barometer: Construction of the 2014 Version
KOF Economic Barometer: Construction of the2014 Version
p Objectives
p No longer use a filter for smoothing
p Broaden the set of underlying time seriesp Define a standardized procedure to select variables (Automatize
and regularly apply the variable selection procedure)
p Two production stages
p Variable selection procedure
p Choose business cycle conceptp Define reference seriesp Pre-select the pool of potential variablesp Fix the automated selection procedure
p Construction of the leading indicator (extract the first principlecomponent from the selected variables)
KOF Economic Barometer: Construction of the 2014 Version
KOF Economic Barometer: Construction of the2014 Version
p Objectives
p No longer use a filter for smoothingp Broaden the set of underlying time series
p Define a standardized procedure to select variables (Automatizeand regularly apply the variable selection procedure)
p Two production stages
p Variable selection procedure
p Choose business cycle conceptp Define reference seriesp Pre-select the pool of potential variablesp Fix the automated selection procedure
p Construction of the leading indicator (extract the first principlecomponent from the selected variables)
KOF Economic Barometer: Construction of the 2014 Version
KOF Economic Barometer: Construction of the2014 Versionp Objectives
p No longer use a filter for smoothingp Broaden the set of underlying time seriesp Define a standardized procedure to select variables
(Automatize and regularly apply the variable selectionprocedure)
p Two production stages
p Variable selection procedure
p Choose business cycle conceptp Define reference seriesp Pre-select the pool of potential variablesp Fix the automated selection procedure
p Construction of the leading indicator (extract the first principlecomponent from the selected variables)
KOF Economic Barometer: Construction of the 2014 Version
KOF Economic Barometer: Construction of the2014 Version
p Objectives
p No longer use a filter for smoothingp Broaden the set of underlying time seriesp Define a standardized procedure to select variables (Automatize
and regularly apply the variable selection procedure)
p Two production stages
p Variable selection procedure
p Choose business cycle conceptp Define reference seriesp Pre-select the pool of potential variablesp Fix the automated selection procedure
p Construction of the leading indicator (extract the firstprinciple component from the selected variables)
KOF Economic Barometer: Construction of the 2014 Version
KOF Economic Barometer: Construction of the2014 Version
p Objectives
p No longer use a filter for smoothingp Broaden the set of underlying time seriesp Define a standardized procedure to select variables (Automatize
and regularly apply the variable selection procedure)
p Two production stages
p Variable selection procedure
p Choose business cycle conceptp Define reference seriesp Pre-select the pool of potential variablesp Fix the automated selection procedure
p Construction of the leading indicator (extract the first principlecomponent from the selected variables)
KOF Economic Barometer: Construction of the 2014 Version
KOF Economic Barometer: Construction of the2014 Version
p Objectives
p No longer use a filter for smoothingp Broaden the set of underlying time seriesp Define a standardized procedure to select variables (Automatize
and regularly apply the variable selection procedure)
p Two production stages
p Variable selection procedurep Choose business cycle concept
p Define reference seriesp Pre-select the pool of potential variablesp Fix the automated selection procedure
p Construction of the leading indicator (extract the first principlecomponent from the selected variables)
KOF Economic Barometer: Construction of the 2014 Version
KOF Economic Barometer: Construction of the2014 Version
p Objectives
p No longer use a filter for smoothingp Broaden the set of underlying time seriesp Define a standardized procedure to select variables (Automatize
and regularly apply the variable selection procedure)
p Two production stages
p Variable selection procedurep Choose business cycle conceptp Define reference series
p Pre-select the pool of potential variablesp Fix the automated selection procedure
p Construction of the leading indicator (extract the first principlecomponent from the selected variables)
KOF Economic Barometer: Construction of the 2014 Version
KOF Economic Barometer: Construction of the2014 Version
p Objectives
p No longer use a filter for smoothingp Broaden the set of underlying time seriesp Define a standardized procedure to select variables (Automatize
and regularly apply the variable selection procedure)
p Two production stages
p Variable selection procedurep Choose business cycle conceptp Define reference seriesp Pre-select the pool of potential variables
p Fix the automated selection procedurep Construction of the leading indicator (extract the first principle
component from the selected variables)
KOF Economic Barometer: Construction of the 2014 Version
KOF Economic Barometer: Construction of the2014 Version
p Objectives
p No longer use a filter for smoothingp Broaden the set of underlying time seriesp Define a standardized procedure to select variables (Automatize
and regularly apply the variable selection procedure)
p Two production stages
p Variable selection procedurep Choose business cycle conceptp Define reference seriesp Pre-select the pool of potential variablesp Fix the automated selection procedure
p Construction of the leading indicator (extract the first principlecomponent from the selected variables)
KOF Economic Barometer: Construction of the 2014 Version
KOF Economic Barometer: Construction of the2014 Version
p Objectives
p No longer use a filter for smoothingp Broaden the set of underlying time seriesp Define a standardized procedure to select variables (Automatize
and regularly apply the variable selection procedure)
p Two production stages
p Variable selection procedurep Choose business cycle conceptp Define reference seriesp Pre-select the pool of potential variablesp Fix the automated selection procedure
p Construction of the leading indicator (extract the firstprinciple component from the selected variables)
KOF Economic Barometer: Reference Series
KOF Economic Barometer: Reference Series
p The KOF Barometer is an indicator published monthly
p The reference series ideally also has a monthly frequency
p The level of seasonally adjusted real GDP is interpolated usingthe Denton additive method
p M-o-m growth rates are calculated out of this and subsequentlysmoothened using a symmetric 13 months moving average
p High frequency current growth rate are highly volatile, reflectingmeasurement errors, weather effects, working day effects, andalike
p The aim of the KOF Barometer is to signal the underlyingbusiness cycle - not high frequency fluctuations
KOF Economic Barometer: Reference Series
KOF Economic Barometer: Reference Series
p The KOF Barometer is an indicator published monthly
p The reference series ideally also has a monthly frequency
p The level of seasonally adjusted real GDP is interpolated usingthe Denton additive method
p M-o-m growth rates are calculated out of this and subsequentlysmoothened using a symmetric 13 months moving average
p High frequency current growth rate are highly volatile, reflectingmeasurement errors, weather effects, working day effects, andalike
p The aim of the KOF Barometer is to signal the underlyingbusiness cycle - not high frequency fluctuations
KOF Economic Barometer: Reference Series
KOF Economic Barometer: Reference Series
p The KOF Barometer is an indicator published monthly
p The reference series ideally also has a monthly frequency
p The level of seasonally adjusted real GDP is interpolatedusing the Denton additive method
p M-o-m growth rates are calculated out of this and subsequentlysmoothened using a symmetric 13 months moving average
p High frequency current growth rate are highly volatile, reflectingmeasurement errors, weather effects, working day effects, andalike
p The aim of the KOF Barometer is to signal the underlyingbusiness cycle - not high frequency fluctuations
KOF Economic Barometer: Reference Series
KOF Economic Barometer: Reference Series
p The KOF Barometer is an indicator published monthly
p The reference series ideally also has a monthly frequency
p The level of seasonally adjusted real GDP is interpolated usingthe Denton additive method
p M-o-m growth rates are calculated out of this andsubsequently smoothened using a symmetric 13 monthsmoving average
p High frequency current growth rate are highly volatile,reflecting measurement errors, weather effects, working dayeffects, and alike
p The aim of the KOF Barometer is to signal the underlyingbusiness cycle - not high frequency fluctuations
KOF Economic Barometer: Reference Series
KOF Economic Barometer: Reference Series
p The KOF Barometer is an indicator published monthly
p The reference series ideally also has a monthly frequency
p The level of seasonally adjusted real GDP is interpolated usingthe Denton additive method
p M-o-m growth rates are calculated out of this and subsequentlysmoothened using a symmetric 13 months moving average
p High frequency current growth rate are highly volatile,reflecting measurement errors, weather effects, working dayeffects, and alike
p The aim of the KOF Barometer is to signal the underlyingbusiness cycle - not high frequency fluctuations
KOF Economic Barometer: Reference Series
KOF Economic Barometer: Reference Series
p The KOF Barometer is an indicator published monthly
p The reference series ideally also has a monthly frequency
p The level of seasonally adjusted real GDP is interpolated usingthe Denton additive method
p M-o-m growth rates are calculated out of this and subsequentlysmoothened using a symmetric 13 months moving average
p High frequency current growth rate are highly volatile, reflectingmeasurement errors, weather effects, working day effects, andalike
p The aim of the KOF Barometer is to signal the underlyingbusiness cycle - not high frequency fluctuations
KOF Economic Barometer: Candidate Variables
KOF Economic Barometer: Candidate Variables
p International variables: currently 32 variables
p Concentrate on the 11 most important trading partners: 1Business tendency and 1 consumer survey question percountry
p Ifo World Economic Survey, assessment and expectations for5 regions
p National variables: currently 444 variables
p KOF Business Tendency Surveys (411)p SECO Consumer Survey (9)p BFS, SECO, OZD, SNB (24)
KOF Economic Barometer: Candidate Variables
KOF Economic Barometer: Candidate Variables
p International variables: currently 32 variables
p Concentrate on the 11 most important trading partners: 1Business tendency and 1 consumer survey question percountry
p Ifo World Economic Survey, assessment and expectations for 5regions
p National variables: currently 444 variables
p KOF Business Tendency Surveys (411)p SECO Consumer Survey (9)p BFS, SECO, OZD, SNB (24)
KOF Economic Barometer: Candidate Variables
KOF Economic Barometer: Candidate Variables
p International variables: currently 32 variables
p Concentrate on the 11 most important trading partners: 1Business tendency and 1 consumer survey question per country
p Ifo World Economic Survey, assessment and expectations for5 regions
p National variables: currently 444 variables
p KOF Business Tendency Surveys (411)p SECO Consumer Survey (9)p BFS, SECO, OZD, SNB (24)
KOF Economic Barometer: Candidate Variables
KOF Economic Barometer: Candidate Variables
p International variables: currently 32 variables
p Concentrate on the 11 most important trading partners: 1Business tendency and 1 consumer survey question per country
p Ifo World Economic Survey, assessment and expectations for 5regions
p National variables: currently 444 variables
p KOF Business Tendency Surveys (411)p SECO Consumer Survey (9)p BFS, SECO, OZD, SNB (24)
KOF Economic Barometer: Candidate Variables
KOF Economic Barometer: Candidate Variables
p International variables: currently 32 variables
p Concentrate on the 11 most important trading partners: 1Business tendency and 1 consumer survey question per country
p Ifo World Economic Survey, assessment and expectations for 5regions
p National variables: currently 444 variables
p KOF Business Tendency Surveys (411)
p SECO Consumer Survey (9)p BFS, SECO, OZD, SNB (24)
KOF Economic Barometer: Candidate Variables
KOF Economic Barometer: Candidate Variables
p International variables: currently 32 variables
p Concentrate on the 11 most important trading partners: 1Business tendency and 1 consumer survey question per country
p Ifo World Economic Survey, assessment and expectations for 5regions
p National variables: currently 444 variables
p KOF Business Tendency Surveys (411)p SECO Consumer Survey (9)
p BFS, SECO, OZD, SNB (24)
KOF Economic Barometer: Candidate Variables
KOF Economic Barometer: Candidate Variables
p International variables: currently 32 variables
p Concentrate on the 11 most important trading partners: 1Business tendency and 1 consumer survey question per country
p Ifo World Economic Survey, assessment and expectations for 5regions
p National variables: currently 444 variables
p KOF Business Tendency Surveys (411)p SECO Consumer Survey (9)p BFS, SECO, OZD, SNB (24)
KOF Economic Barometer
KOF Economic Barometer
2004 2006 2008 2010 2012 2014707580859095
100105110115120
-4-3-2-10123456
KOF Economic Barometer (Index values; long-term average 2004–2013=100; left scale)Month-on-month change of the Swiss business cycle (Reference series; SECO/KOF, right scale)
Economic Barometer and Reference Series
When we have collected a list of indicators, we have to look foreach series whether we need a
p seasonal adjustment
p data transformation of filtering.
When we have collected a list of indicators, we have to look foreach series whether we need a
p seasonal adjustment
p data transformation of filtering.
Outline
Outline
1 Business Cycles
2 Collecting Potential Indicators
3 Analyzing Individual IndicatorsCross-CorrelationTurning Points
4 Composite Indicators
5 Publication of Composite Indicators
6 Forecasting with Indicators
Example
Example
-4
-3
-2
-1
0
1
2
3
4
1970 1973 1976 1979 1982 1985 1988 1991 1994 1997 2000 2003 2006
Ifo Business Climate and Cyclical Component of Real GDP
Cyclical Component of Real GDP (1)
Ifo Business Climate for Industry and Trade (1)
1) Standardized. Source: Federal Statistical Office, Ifo Business Survey.
Example
Example
-0,8
-0,6
-0,4
-0,2
0,0
0,2
0,4
0,6
0,8
-0,8
-0,6
-0,4
-0,2
0
0,2
0,4
0,6
0,8
-8 -7 -6 -5 -4 -3 -2 -1 0 1 2 3 4 5 6 7 8
Cross Correlogramm: Ifo Business Climate and Cyclical Component of real GDP
Correlation Coeffizient ρ
Source: Statistical Office, Ifo Business Survey.
Lead of the Ifo Business Climate in Quarters <
Algorithm for dating turning points
Algorithm for dating turning points
Harding, Pagan: Minimum needs for an algorithm
Example
Example
-4
-3
-2
-1
0
1
2
3
4
1970 1973 1976 1979 1982 1985 1988 1991 1994 1997 2000 2003 2006
Turning Points of the German Business Cycle and Ifo Business Climate
Cyclical Component of GDP Ifo BC Turning Points of GDP Turning Points of BC
1) Standardized values
Source: Statistisches Bundesamt, ifo Konjunkturtest.
Example
Example
-4
-3
-2
-1
0
1
2
3
1978 1981 1984 1987 1990 1993 1996 1999 2002 2005 2008
Turning Points of Real Value Added in Manufacturing in Germany and Ifo Capacity Utilization
Cyclical component of value added Ifo capacity utilization (1) (2) (3)
Turning points of value added Turning points of capacity utilization
1) Standardized values.-2) Including food.-3) Smoothed with local weighted polynomial regression.
Source: DESTATIS, Ifo Business Cycle Test.
Outline
Outline
1 Business Cycles
2 Collecting Potential Indicators
3 Analyzing Individual Indicators
4 Composite IndicatorsMotivationClassical Approach (NBER)Factor Analysis
5 Publication of Composite Indicators
6 Forecasting with Indicators
Approaches
Approaches
Question:How can we condense information contained in variousindicators into one (or at least in a view) indicator(s)?
p Classical (NBER)
p Factor analysis and Principal Components
Steps in Classical Approach
Steps in Classical Approach
p Choose and classify indicators (detrending, cross-correlations,turning points, co-spectral analysis)
p Standardize indicators
p Average indicators (and standardize)
Factor ModelsThese models consider that a common force drives thedynamics of all variables. This common force, also known ascommon factor, is typically of low dimension and is not directlyobserved because every macroeconomic variable embodiessome idiosyncratic noise or short term movements. Factormodels clean every variable from these idiosyncraticmovements and estimate the common component in everyseries.
Outline
Outline
1 Business Cycles
2 Collecting Potential Indicators
3 Analyzing Individual Indicators
4 Composite Indicators
5 Publication of Composite Indicators
6 Forecasting with Indicators
Publication of Composite Indicators
Publication of Composite Indicators
Aims
p Inform the public
p Make the data valuable for the audience
How?
p Define a publication strategy with
p Public publication calendarp Media/Press releases and maybe other outlets (reports)p Publication of data
Press release
Press release Paris, 11 January 2016
OECD Composite Leading Indicators
News Release
Composite leading indicators continue to point to stable growth momentum in the
OECD area
Composite leading indicators (CLIs), designed to anticipate turning points in economic activity relative to
trend, continue to point to stable growth momentum in the OECD area as a whole but to diverging patterns
across major emerging economies.
The outlook is for stable growth momentum in the Euro area as a whole, particularly in Germany and
Italy, as well as in Canada and Japan. In France, the CLI signals growth firming.
In the United Kingdom and the United States, the CLIs point to easing growth, albeit from relative high
levels.
Amongst the major emerging economies, the CLIs for China and Brazil confirm the tentative signs of
stabilisation flagged in last month’s assessment. In Russia, the CLI anticipates growth losing momentum
while the CLI for India signals firming growth.
Stable growth momentum in the OECD area Tentative signs of stabilisation in China
Easing growth in the United States Stable growth momentum in the Euro area
The above graphs show country specific composite leading indicators (CLIs). Turning points of CLIs tend to precede turning points in
economic activity relative to trend by approximately six months. The horizontal line at 100 represents the trend of economic activity.
Shaded triangles mark confirmed turning-points of the CLI. Blank triangles mark provisional turning-points that may be reversed.
Methodological Notes: The CLI methodological notes are available at: www.oecd.org/std/leading-indicators/44728410.pdf Watch our video explaining the CLIs: HTTP://WWW.YOUTUBE.COM/WATCH?FEATURE=PLAYER_EMBEDDED&V=UY8IPW0GVAO Access data: : http://stats.oecd.org/Index.aspx?DataSetCode=MEI_CLI
Contacts: For further information journalists are invited to contact the OECD's Media Relations Division on (33) 1 45 24 97 00 or e-mail [email protected]. For technical questions contact [email protected] Next release: 8 February 2016
92
94
96
98
100
102
104
2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 201590
92
94
96
98
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106
2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015
92
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98
100
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104
2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 201592
94
96
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104
2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015
Press release
Press release Paris, 11 January 2016
OECD Composite Leading Indicators
News Release
Stable growth momentum in Japan Growth firming in France
Stable growth momentum in Germany Stable growth momentum in Italy
Easing growth in the United Kingdom Tentative signs of stabilisation in Brazil
Stable growth momentum in Canada Growth firming in India
Growth losing momentum in Russia
The graphs show country specific composite leading indicators
(CLIs). Turning points of CLIs tend to precede turning points in
economic activity relative to trend by approximately six months.
The horizontal line at 100 represents the trend of economic
activity. Shaded triangles mark confirmed turning-points of the
CLI. Blank triangles mark provisional turning-points that may be
reversed.
92
94
96
98
100
102
104
2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 201592
94
96
98
100
102
104
2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015
92
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102
104
2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 201592
94
96
98
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2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015
92
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98
100
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104
2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 201592
94
96
98
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106
2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015
92
94
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98
100
102
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2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 201592
94
96
98
100
102
104
2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015
889092949698
100102104106108
2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 2014 2015
Press release
Press release Paris, 11 January 2016
OECD Composite Leading Indicators
News Release
Table 1: Composite Leading Indicators*
Ratio to trend, amplitude
adjusted
Month on Month change Year on
Year
change
Growth cycle outlook (long term average =100) (%) (%)
2015 2015 Latest
month Jul Aug Sep Oct Nov Jul Aug Sep Oct Nov
OECD Area 100.0 99.9 99.9 99.8 99.8 -0.09 -0.09 -0.06 -0.04 -0.02 -0.57 Stable growth momentum
Euro Area 100.5 100.5 100.5 100.6 100.6 0.00 0.00 0.02 0.04 0.05 0.46 Stable growth momentum
Major Five Asia** 99.0 99.0 99.0 99.1 99.2 -0.04 -0.03 0.02 0.06 0.10 -0.23 Tentative signs of stabilisation
Major Seven 99.9 99.8 99.7 99.6 99.6 -0.10 -0.11 -0.10 -0.08 -0.06 -0.82 Easing growth
Canada 99.6 99.5 99.5 99.5 99.5 -0.05 -0.05 -0.05 -0.02 0.00 -0.68 Stable growth momentum
France 100.6 100.6 100.7 100.8 100.9 0.07 0.08 0.09 0.08 0.08 1.13 Growth firming
Japan 100.0 99.9 99.9 99.8 99.8 -0.05 -0.07 -0.07 -0.06 -0.05 -0.20 Stable growth momentum
Germany 99.9 99.9 99.9 99.9 99.9 -0.04 -0.04 -0.02 0.01 0.05 0.17 Stable growth momentum
Italy 100.8 100.8 100.8 100.9 100.9 -0.01 0.00 0.03 0.04 0.02 0.61 Stable growth momentum
United Kingdom 100.0 99.8 99.5 99.3 99.1 -0.19 -0.23 -0.24 -0.23 -0.21 -1.80 Easing growth
United States 99.6 99.5 99.3 99.2 99.1 -0.15 -0.17 -0.16 -0.12 -0.09 -1.53 Easing growth
Brazil 99.1 99.1 99.2 99.3 99.5 0.03 0.06 0.10 0.13 0.13 0.03 Tentative signs of stabilisation
China*** 98.2 98.2 98.2 98.3 98.4 -0.09 -0.06 0.01 0.09 0.16 -0.80 Tentative signs of stabilisation
India 99.8 99.9 100.1 100.2 100.4 0.13 0.14 0.14 0.14 0.14 1.37 Growth firming
Russia 100.1 100.0 99.9 99.6 99.4 -0.05 -0.11 -0.12 -0.25 -0.27 -1.09 Growth losing momentum
* CLI data for 33 OECD member countries and 6 OECD non-member economies are available at:
http://stats.oecd.org/wbos/default.aspx?datasetcode=MEI_CLI
** China, India, Indonesia, Japan and Korea.
*** The reference series for China is the Index of Industrial Production.
Press release
Press release
Press ReleaseZurich, 23 December 2015, 9.00 a.m.
KOF Swiss Economic Institute | Corporate Communications | Phone +41 44 632 42 39 | [email protected]
KOF Economic Barometer: A Further Dip
In December, the KOF Economic Barometer recorded a small dip of 0.7 points (from a revised value
of 97.3) to a new reading of 96.6. According to the Barometer, a slightly dimmed outlook for the Swiss
economy persists.
As in the previous month, the fall of the KOF Economic Barometer in December was mainly driven by a
deterioration of sentiments related to Swiss manufacturing activity, indicating that the lasting effects of the franc
shock are not over yet. Further negative tendencies are observed in indicators related to construction activity
(especially among architects) as well as those related to private consumption. These negative tendencies are
partly counterbalanced by an improving outlook for indicators related to foreign demand and the financial industry.
Within the manufacturing sector, the outlook improved in the mechanical engineering as well as in the textile
industry. Slightly positive tendencies are observed in electrical, paper, and wood-processing industries. These
positive tendencies are clouded by the worsening outlook especially in the metal industry as well as the food-
processing and special industries. As a result, the manufacturing sector contributes negatively to the dynamics
of the Barometer. The deterioration of sentiment in manufacturing is primarily reflected in the assessment of
production and new orders. At the same time positive impulses come from indicators related to the assessment
of employment and intermediate products.
KOF Economic Barometer
(Index values)
Values for the past months
Current level /Level a month ago
2014-12 98.2 98.2
2015-01 96.2 96.2
2015-02 88.5 88.5
2015-03 90.2 90.2
2015-04 90.4 90.4
2015-05 103.2 103.2
2015-06 99.6 99.6
2015-07 99.0 99.0
2015-08 101.3 101.2
2015-09 100.3 100.3
2015-10 100.4 100.4
2015-11 97.3 97.9
2015-12 96.6
KOF Economic Barometer(Index values)
KOF Economic Barometer (long-term average 2005–2014=100)
2012 2013 2014 201570
7580
85
9095
100
105110115
120
Press release
Press release
KOF Economic Barometer and reference time series: annual update
In September 2015, the scheduled annual update of the KOF Economic Barometer took place. This annual update
concerns the following stages: redefinition of the pool of indicators that enter the selection procedure, update of
the reference time series, a new execution of the variable selection procedure and a technical adjustment how
to cope with missing monthly values of quarterly variables. Compared to 479 indicators that entered the variable
selection procedure in October 2014, the current pool comprises 420 indicators due to elimination of KOF surveys
related to prices and monthly changes in inventories. The updated reference series is the smoothed continuous
growth rate of Swiss GDP according to the new System of National Accounts ESVG 2010, released at the end
of August 2015, which takes into account the release of the previous year’s annual Gross Domestic Product
(GDP) data by the Swiss Federal Statistical Office. As a result of the indicator variable selection procedure, the
updated KOF Economic Barometer is now based on 238 indicators (instead of 217 as in the previous vintage)
that are combined using statistically determined weights. Last but not least, with this annual update we introduce
a slight modification of how the variables observed at only the quarterly frequency are treated when computing
the Barometer. Instead of freezing those values until the next quarterly release is available, we now implement
a statistical procedure to interpolate data values for these variables using the information contained in all other
variables that are available at monthly frequency.
KOF Swiss Economic Institute | Corporate Communications | Phone +41 44 632 42 39 | [email protected]
KOF Economic Barometer (Index values; long-term average 2005–2014=100; left scale)Month-on-month change of the Swiss business cycle (Reference series; SECO/KOF, right scale)
Economic Barometer and Reference Series
2004 2006 2008 2010 2012 201460
70
80
90
100
110
120
-6
-4
-2
0
2
4
6
KOF Economic Barometer and Reference Series
For detailed information on the new version of the KOF Economic Barometer see:
http://www.kof.ethz.ch/en/indicators/economic-barometer/ →
Contact
Dr. Boriss Siliverstovs | Phone +41 44 632 46 24 | [email protected]
David Iselin | Phone +41 44 632 53 44 | [email protected]
Elements of a media release
Elements of a media release
p Headlines
p First paragraph
p Text
p Graphs
p Tables
p Contact
Outline
Outline
1 Business Cycles
2 Collecting Potential Indicators
3 Analyzing Individual Indicators
4 Composite Indicators
5 Publication of Composite Indicators
6 Forecasting with IndicatorsMotivation
????casting
????casting
TimeMonth 1 Month 2 Month 3 Month 4 Month 5 Month 6 Month 7 Month 8 Month 9
Quarter I Quarter II Quarter III
????casting
????casting
TimeMonth 1 Month 2 Month 3 Month 4 Month 5 Month 6 Month 7 Month 8 Month 9
Quarter I Quarter II Quarter III
GDP/National Account
????casting
????casting
TimeMonth 1 Month 2 Month 3 Month 4 Month 5 Month 6 Month 7 Month 8 Month 9
Quarter I Quarter II Quarter III
GDP/National Account
Flash Estimate t+45
????casting
????casting
TimeMonth 1 Month 2 Month 3 Month 4 Month 5 Month 6 Month 7 Month 8 Month 9
Quarter I Quarter II Quarter III
GDP/National Account
Flash Estimate t+45
I.t+65
????casting
????casting
TimeMonth 1 Month 2 Month 3 Month 4 Month 5 Month 6 Month 7 Month 8 Month 9
Quarter I Quarter II Quarter III
GDP/National Account
Flash Estimate t+45
I.t+65
II.t+100
III.t+120
????casting
????casting
TimeMonth 1 Month 2 Month 3 Month 4 Month 5 Month 6 Month 7 Month 8 Month 9
Quarter I Quarter II Quarter III
GDP/National Account
Flash Estimate t+45
I.t+65
II.t+100
III.t+120
Forecasting exercise
Backcasting Nowcasting Forecasting
Composite Indicators
Composite Indicators
p Leading indicators
p Coincident indicators (but publication lead)
Composite Indicators: Uses
Composite Indicators: Uses
p Nowcasting
p Short term forecasting (e.g. next quarter)
p (Backcasting, revision prediction)
GDP Vintages
GDP Vintages
GDP Nowcast [2015.03.03]
The nowcast of GDP has been produced by the dynamic factor model suggested in Giannone et al. (2008).
The model has been estimated using 555 indicators related to the Swiss economy that are sub-divided into
the following 9 blocks: Purchasing Managers Index in manufacturing supplied by Credit Suisse (9 time
series, “PMGR”), consumer price indices (28, “CPI”), labor market indicators (6, “LABOUR”), producer
price indices (11, “PPI”), business tendency surveys in manufacturing collected at the KOF Swiss Economic
Institute (150, “CHINOGA”), exports and imports (249, “TRADE”), stock market indices (79, “STMKT”),
interest rates (20, “INT.RATE”), and exchange rates (3, “EXCH.RATE”). The forecasting performance
of the model was investigated in Siliverstovs and Kholodilin (2012) in a pseudo real-time simulation setup.
Siliverstovs (2012) investigates the forecasting performance of the model in real time.
Table 1 reports several most recent vintages of real GDP growth [quarterly, seasonally adjusted]. Table 2
reports the most recent nowcast for the current quarter and tracks record of past nowcasts and first releases
of GDP growth by SECO. Figures 1, 2 and 3 display real-time nowcasts for the years 2010-2011, 2012-2013
and for 2014 together with the first quarter of 2015, respectively. SECO estimates of GDP growth are shown
by straight lines (a bold line corresponds to the first release for a particular quarter).
Table 1: Vintages: Quarterly real GDP growth (seasonally adjusted, non-annualised)
BIP 2012Q2 2012Q3 2012Q4 2013Q1 2013Q2 2013Q3 2013Q4 2014Q1 2014Q2 2014Q3 2014Q4
2010Q1 0.99 0.99 0.99 0.99 1.07 1.06 1.04 1.04 0.91 0.92 0.922010Q2 0.90 0.90 0.89 0.88 0.83 0.83 0.82 0.82 0.89 0.90 0.902010Q3 0.70 0.70 0.69 0.69 0.63 0.62 0.59 0.60 0.36 0.34 0.342010Q4 0.97 0.96 1.00 1.01 0.94 0.96 1.02 1.02 0.86 0.87 0.862011Q1 0.25 0.29 0.28 0.26 0.28 0.28 0.27 0.26 0.38 0.38 0.392011Q2 0.50 0.50 0.50 0.52 0.41 0.40 0.38 0.38 0.56 0.57 0.572011Q3 -0.20 -0.25 -0.25 -0.24 -0.18 -0.19 -0.22 -0.21 -0.11 -0.14 -0.142011Q4 0.37 0.34 0.31 0.30 0.24 0.25 0.32 0.32 0.39 0.41 0.402012Q1 0.53 0.47 0.48 0.40 0.47 0.46 0.43 0.42 0.10 0.10 0.102012Q2 -0.06 -0.12 -0.11 -0.06 -0.04 -0.06 -0.08 -0.08 0.27 0.28 0.282012Q3 . 0.57 0.57 0.61 0.68 0.74 0.71 0.72 0.66 0.62 0.622012Q4 . . 0.24 0.26 0.30 0.28 0.39 0.39 0.38 0.41 0.402013Q1 . . . 0.56 0.58 0.55 0.60 0.60 0.15 0.16 0.162013Q2 . . . . 0.52 0.55 0.57 0.54 1.04 1.05 1.052013Q3 . . . . . 0.52 0.51 0.54 0.37 0.34 0.342013Q4 . . . . . . 0.16 0.18 0.50 0.52 0.522014Q1 . . . . . . . 0.46 0.44 0.45 0.462014Q2 . . . . . . . . 0.19 0.29 0.292014Q3 . . . . . . . . . 0.63 0.662014Q4 . . . . . . . . . . 0.60
1
GDP Nowcasting at KOF
GDP Nowcasting at KOF
Table 2: Quarterly real GDP growth (seasonally adjusted, non-annualised)
Target Nowcast Actual (SECO)a Target Nowcast Actual (SECO)
2009Q1 2010Q1 0.57 [-0.16, 1.30] 0.41
Released on Released on 02.03.2010 01.06.2010
2009Q2 2010Q2 0.80 [ 0.07, 1.53] 0.85
Released on Released on 02.06.2010 02.09.2010
2009Q3 0.22 [-0.50, 0.94] 0.30 2010Q3 0.63 [-0.16, 1.42] 0.69
Released on 20.11.2009 01.12.2009 Released on 02.09.2010 02.12.2010
2009Q4 0.34 [-0.40, 1.07] 0.73 2010Q4 0.66 [-0.12, 1.44] 0.87
Released on 01.12.2009 02.03.2010 Released on 02.12.2010 01.03.2011
2011Q1 0.80 [0.02, 1.57] 0.25 2012Q1 0.36 [-0.45, 1.17] 0.68
Released on 03.03.2011 31.05.2011 Released on 02.03.2012 31.05.2012
2011Q2 0.61 [-0.17, 1.39] 0.36 2012Q2 0.24 [-0.57, 1.05] -0.06
Released on 05.06.2011 01.09.2011 Released on 01.06.2012 04.09.2012
2011Q3 0.00 [-0.77, 0.77] 0.22 2012Q3 0.14 [-0.59, 0.87] 0.57
Released on 06.09.2011 01.12.2011 Released on 04.09.2012 29.11.2012
2011Q4 -0.15 [-0.96, 0.66] 0.09 2012Q4 0.25 [-0.47, 0.97] 0.24
Released on 01.12.2011 01.03.2012 Released on 29.11.2012 28.02.2013
2013Q1 0.55 [-0.18, 1.28] 0.56 2014Q1 0.69 [-0.03, 1.41] 0.46
Released on 01.03.2013 30.05.2013 Released on 04.03.2014 28.05.2014
2013Q2 0.50 [-0.21, 1.21] 0.52 2014Q2 0.56 [-0.15, 1.27] -0.04 (0.19)b
Released on 03.06.2013 03.09.2013 Released on 29.05.2014 02(30).09.2014
2013Q3 0.44 [-0.27, 1.15] 0.52 2014Q3 0.39 [-0.33, 1.11] 0.63
Released on 03.09.2013 28.11.2013 Released on 02.09.2014 03.12.2014
2013Q4 0.55 [-0.18, 1.28] 0.16 2014Q4 0.28 [-0.41, 0.97] 0.60
Released on 28.11.2013 27.02.2014 Released on 03.12.2014 03.03.2015
continued . . .
2
Table 2: Quarterly real GDP growth (seasonally adjusted, non-annualised)
Target Nowcast Actual (SECO)a Target Nowcast Actual (SECO)
2009Q1 2010Q1 0.57 [-0.16, 1.30] 0.41
Released on Released on 02.03.2010 01.06.2010
2009Q2 2010Q2 0.80 [ 0.07, 1.53] 0.85
Released on Released on 02.06.2010 02.09.2010
2009Q3 0.22 [-0.50, 0.94] 0.30 2010Q3 0.63 [-0.16, 1.42] 0.69
Released on 20.11.2009 01.12.2009 Released on 02.09.2010 02.12.2010
2009Q4 0.34 [-0.40, 1.07] 0.73 2010Q4 0.66 [-0.12, 1.44] 0.87
Released on 01.12.2009 02.03.2010 Released on 02.12.2010 01.03.2011
2011Q1 0.80 [0.02, 1.57] 0.25 2012Q1 0.36 [-0.45, 1.17] 0.68
Released on 03.03.2011 31.05.2011 Released on 02.03.2012 31.05.2012
2011Q2 0.61 [-0.17, 1.39] 0.36 2012Q2 0.24 [-0.57, 1.05] -0.06
Released on 05.06.2011 01.09.2011 Released on 01.06.2012 04.09.2012
2011Q3 0.00 [-0.77, 0.77] 0.22 2012Q3 0.14 [-0.59, 0.87] 0.57
Released on 06.09.2011 01.12.2011 Released on 04.09.2012 29.11.2012
2011Q4 -0.15 [-0.96, 0.66] 0.09 2012Q4 0.25 [-0.47, 0.97] 0.24
Released on 01.12.2011 01.03.2012 Released on 29.11.2012 28.02.2013
2013Q1 0.55 [-0.18, 1.28] 0.56 2014Q1 0.69 [-0.03, 1.41] 0.46
Released on 01.03.2013 30.05.2013 Released on 04.03.2014 28.05.2014
2013Q2 0.50 [-0.21, 1.21] 0.52 2014Q2 0.56 [-0.15, 1.27] -0.04 (0.19)b
Released on 03.06.2013 03.09.2013 Released on 29.05.2014 02(30).09.2014
2013Q3 0.44 [-0.27, 1.15] 0.52 2014Q3 0.39 [-0.33, 1.11] 0.63
Released on 03.09.2013 28.11.2013 Released on 02.09.2014 03.12.2014
2013Q4 0.55 [-0.18, 1.28] 0.16 2014Q4 0.28 [-0.41, 0.97] 0.60
Released on 28.11.2013 27.02.2014 Released on 03.12.2014 03.03.2015
continued . . .
2
Forecatsing system
Forecatsing system
p Macroeconomic model consisting of Error Correction Modelsand equations to ensure consistency. This model is used forquarterly forecasts of various variables up to two years.Consistency of the model forecasts is crucial.
p Nowcasting and short term forecasting with indicator model.These forecasts are used to adjust the model forecasts in theshort term.
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