The Tragedy of Under-Innovation: Intellectual Property...
Transcript of The Tragedy of Under-Innovation: Intellectual Property...
Motivation Background Modeling the Anticommons Empirical Test Conclusions Appendix
The Tragedy of Under-Innovation:Intellectual Property Rights and the Anticommons
in Biofuel Technologies
Annabelle Berklund
Colorado State University
October 31, 2014
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Roadmap
1 Motivation
2 BackgroundCommons and AnticommonsExamplesDetour
Innovation and Patents
3 Modeling the AnticommonsExisting LiteratureModel SpecificationTheoretical Conclusions
4 Empirical TestBiofuelsBiofuel Patent Data
5 Conclusions
6 Appendix
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Motivations
With large R&D incentives for Biofuels production, why haven’tmore made it to market?
RFS, MTBE ban, International PoliciesLarge amounts of Public and Private R&D funding
Patents, a form of intellectual property rights (IPR), have beenscrutinized in the media recently, are they part of biofuel’s problem?
Research Question:Tragedy of the Anticommons in IPR
Have fragmented patents rights, which increase transaction costs,inhibited biofuels innovation?
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Commons and Anticommons
Commons and Anticommons
The Tragedy of the Commons
Lack of property rights →overuse
The Tragedy of the Anticommons
Overlapping/fragmented propertyrights → suboptimal use
Why is this a problem?Negative externalities
1 Reduces the use value of allother owners rights
2 Under-use today → futuregrowth consequences
Prisoner’s dilemma
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Examples
Examples of the Anticommons
Complementary oligopoly
Two independent firms hold monopolies on complementaryinputs (Cournot, 1963)
Quaker Oats Klondike Big Inch Land PR Ploy
Eastern European Store Fronts post 1991 (Heller, 1998)
River Regulation
Overlapping water regulation agencies in the U.S. →suboptimal use of river-basin (Kosnik, 2012)
Fisheries (Filipe, 2011)
Intellectual Property Rights (Heller and Eisenberg, 1998;Bessen and Maskin, 2009)
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Detour
The U.S. Patent System
Patent term in U.S. is 20years
The average application topublication lag is 18 monthswith great variation.
Complex application process→ need for intermediary
U.S. Patent examiners haveperverse incentives →increased patenting in U.S.(Shapiro, 2001; Lei &Wright, 2000).
Bayh Dole Act, 1989 →increased universitypatenting
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Detour
Innovation and Patents
Patents create excitability over the use of claimed ideas
Allows inventors to earn temporary monopoly profits to recoup R&Dexpenses
Positive Impact
Patent allows firm to act as a gatekeeper and supports follow-oninnovations(Kitch, 1977; Arora, 1995).
Negative Impact
Asymmetric information between upstream and downstreaminnovators (Bessen, 2004; Bessen & Maskin, 2009).
Divergent expectations about payoffs from patents → inefficientlicense bargaining (Galasso, 2012; Lacetera & Zirulia, 2012; Priest& Kliein, 1984).
Increased transaction costs associated with acquiring licenses toexisting patent rights slows down innovation (Heller, 1998).
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Existing Literature
Existing Literature
Anticommons in IPR
Largely addresses bargaining and transaction costs for patent rights
post invention discovery, by private firms who are assumed to
appropriate all patent royalties (Buchanan & Yoon, 2000; Bessen &
Maskin, 2009; Comino, et. al, 2011; D’Agata, 2012; Schulz, et. al, 2002).
Principal-Agent Models of Researcher Incentives
Private: Researchers of various types exert effort based on theirfirm’s incentive schemes and reservation utility (Dasgupta &Stiglitz,1980; Aghion, et. al, 2000; Stern, 2006; Lissoni, et. al, 2013)
Public: Researchers allocate efforts towards basic or applied researchprojects, constrained by university incentive structure (Lach andSchankerman, 2008; Huffman & Just, 2000)
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Existing Literature
Drawbacks and Solutions
Drawbacks of Existing Literature
Ex post bargaining doesn’t address the question of whether ornot a researcher embarks on a research trajectory ex ante,given their knowledge of the existing patents in place, andhow institutional settings change these outcomes.
To my knowledge no comprehensive model of public andprivate research institutional constraints exists
Proposed solutions to the Anticommons in IPR include:
Patent pooling, licensing, acquisitions, partnerships andcollaboration, and legal intervention (Shapiro, 2001;Audretsch & Feldman, 2002)
All of these require some monetary or effort costs→transaction cost
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Model Specification
Goals for Modeling Researcher Incentives
Researchers constrained by their institutional setting exerteffort on R&D.
Projects have an underlying probability of success
Conditional on market conditionsResearchers knowledge of this probability is incompleteThe IPR surrounding the existing knowledge stock changes theprobability and costs of commercialization.
Researchers gain new knowledge about the profitability of anidea each period as more information is acquired → Bayesianupdating.
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Model Specification
Incentives and Invention in Universities
Lach and Schankerman’s 2008 (RAND) paper addresses several ofthe researcher incentives I aim to model, but in the context ofuniversity Rresearchers, their model assumes:
Researchers allocate time to basic, applied, or commercialresearch to maximize expected utilityShadow prices for effort levels are determined by the universitythrough their incentive scheme.University constraints, such as royalty shares, changeresearcher incentivesEffectiveness of the technology licensing office determinesfaculty royalty rates.
My model generalizes Lach and Schankerman’s model toinclude: the possibility of both public and private research
principals, an IPR fragmentation cost function, and Bayesianupdating.
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Model Specification
Effort
e: effort towards basic researchz : effort towards new applied researchq: effort towards commercialization of applied research
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Model Specification
Modeling Researcher Incentives Mathematically
Researchers who are constrained by their institutional settingschoose their level of effort towards a vector of research efforts(e, z , q) to maximize their expected utility:
E (U(e, z , q)|s, θ, γ)
Where:s = share of licensing revenue to inventor, ε{0, 1}θ = effectiveness of the IP intermediary ε{0, 1}γ = fragmentation index ε{0, 1}
U(e, z , q) = V (s ∗ r(z , q), p(e, z , q))− C (e, q, z)
C (e, z , q) is a convex effort cost functionp(e, z , q) is a concave publications production functionr(z , q) is revenue from individual’s research efforts
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Model Specification
Expected Revenue per Researcher
Ideas are patented if: θυ > υ + c(γ)c(γ) is a convex cost function, with 0 ≤ γ ≤ 1γ = 1 represents sole ownership of IPRγ = 0 represents complete fragmentation of IPRn(z) is an increasing and concave function for the number of newapplied research projectsEffort q produces an invention with potential commercial valueυ(q) = ψ(q)ε
ψ(q) is increasing and concaveε is an independent stochastic shock observed after effortchoices are made, with distribution function G (ε)
Expected patent profits per researcher are then:
r(z , q) = θn(z)ψ(q)∞∫
υ+c(γ)θψ(q)
εdG (ε).
s = share of licensing revenue to inventorθ = Effectiveness of the IP intermediaryγ = fragmentation index
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Theoretical Conclusions
Model Conclusions
Given our First Order Conditions:
V2pe − Ce = 0sV1rz + V2pz − Cz = 0sV1rq + V2pq − Cq = 0
it can be shown that increased fragmentation of IPR decreasesresearcher’s applied and commercial efforts:
∂z∂γ>0, ∂q
∂γ>0
Note: the specific distribution function G (ε) determines the magnitudeof these changes.Next Step: Add Bayesian Updating following Weiler, et. al (2008) suchthat:
E [U(ri,j |θi , γj)]
where researcher’s knowledge of γj is updated each period, contingentupon the effectiveness of the IP intermediary at IDing the existing IPR.
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Biofuels
Application to Biofuels
Strong innovation incentives for biofuels arose with the increasingthreat of climate change, national security, and rising gas prices.
Gas Price Instability: Oil Embargo, Increased NG Production, Carbon Tax andTradingU.S. Policies: MTBE Ban, Clean Air Act, Renewable Fuel Standard
Despite these incentives we haven’t reached 2nd genfuel goals:
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Biofuel Patent Data
Data: Biofuels Patents
Our constructed data set contains:
28,776 Patent Families Internationally over 60 years7,342 U.S. Patents
We then break the data into 6 technology spaces:
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Biofuel Patent Data
Summary Statistics and Trends
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Biofuel Patent Data
International Patent Family Trends
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Biofuel Patent Data
Technology Trends by Fuel Type
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Biofuel Patent Data
Empirically Testing the Anticommons
Empirical Question:
Given an existing invention, what is the probability a follow-oninvention exists given the fragmentation of IPR and other inventioncharacteristics?
Pr(Yi ) = β0 + β1~x1,i + β2~x2,i + β3~x3,i + β4~x4,i + β5~x5,i
where:
yi =
{1 if a follow-in invention exists;0 otherwise.
~x1: density/fragmentation of technology space~x2: inventor characteristics~x3: assignee characteristics~x4: backward citations and number of claims fixed effects~x5: includes controls for yearly variation
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Next Steps
Bayesian Updating
Fragmentation Index
Forward and backward missing citation identification (Lei,2014)Publication data along a technology trajectoryPatent Ownership dynamics/concentration ratio along apathway
Researcher and Institution Characteristics
Geography and time fixed effects
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Questions/Comments?
Happy Halloween!
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References
Aghion, P., Dewatripont, M., and Stein, J.C., (2008). Academic freedom, private sector focus, and the process ofinnovation. The RAND Journal of Economics, 39(3), 617-635Audretsch, D.B. & Feldman, M.P. (May 2003). Knowledge Spillovers and the Geography of Innovation. Handbookof Urban and Regional Economics, 4, 1-41.Bessen, J., & Maskin, E. (Jan 2009). Sequential Innovation, Patents, and Imitation. RAND Journal of Economics,40 (4), 611-635.Buchanan, James, and Yong Yoon. Symmetric Tragedies: Commons and Anticommons, Apr 2000. Journal of Lawand Economics: 43(1): 1-13.Comino, S., Manenti F.M., Nicol, A. (Nov 2011). Ex-ante licensing in sequential innovations, Games and EconomicBehavior,73(2), 388-4.Comino, S., F. Manenti, & A. Nicol. (Nov 2011). Ex-ante licensing in sequential innovation. Games and EconomicBehavior, 73(2), 388-401.DAgata, Antonio. Geometry of Cournot-Nash Equilibrium with Application to Commons and Anticommons, 2010.The Journal of Economic Education: 41(2): 169-176.Filipe, J.A., Ferreira, M.A., Coelho, M. & Pedro, I. (Jul 2011). Modeling Anti-Commons. The Case of Fisheries.International Journal of Academic Research, 3(4), 456-460.Fuglie, K.O., Heisey, P.W., King, J.L., Pray, C.E., Day-Rubenstein, K., Schimmelpfennig, D., Wang, S.L., and R.Karmarkar-Deshmukh. Research Investments and Market Structure in the Food Processing, Agricultural Input, andBiofuel Industries Worldwide, Dec, 2011. United States Department of Agriculture, Economic Research Service,Report number 130.Griliches, Z. (1990). Patent Statistics as Economic Indicators: A Survey. Journal of Economic Literature, 28 (4),1661-1707
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References Cont.
Heller, Michael. The Tragedy of the Anticommons: property in the Transition from Marx to Markets, Jan 1998.Harvard Law Review: 111 (3): 621-688.Heller, M.A. & Eisenberg, R.S. (1998). Can Patents Deter Innovation? The Anticommons in Biomedical Research.Science, 280, 698-701.Huang, K. & Murray, F. (2009). Does Patent Strategy Shape the Long-Run Supply of Public Knowledge?Evidence from Human Genetics. Academy of Management Journal, 52 (6), 1193-1221.Huffman, W.E. & Just, R.E. (2000). Setting Efficient Incentives for Agricultural Research: Lessons fromPrincipal-Agent Theory. American Journal of Agricultural Ecoonomcis, 82(4), 828-841.Kosnik, L. (2012). The anticommons and the environment. Journal of Environmental Management 101, 206217.Lach, S. & Schankerman, M., (2008). Incentives and Invention in Universities. The RAND Journal of Economics,39(2), 403-433.// Lacetera, N. & Zirulia, L. (2012). Individual preferences, organization, and competition in amodel of R&D incentive provision. Journal of Economic Behavior & Organization, 84, 550-570. Lissoni, F, Montobbio, F, Zirulia, L. (2013). Inventorship and authorship as attribution rights: An enquiry intothe economics of science credit. Journal of Economic Behavior & Organization, 95, 49-69.Lei, Zhen and Brian Wright. Why Weak Patents? Rational Ignorance or Pro-Consumer Tilt?. Agricultural andApplied Economics Association in its series 2009 Annual Meeting, July 26-28, 2009, Milwaukee, Wisconsin withnumber 49279. Shapiro, C. (Jan 2001). Navigating the Patent Thicket: Cross Licenses, Patent Pools, andStandard Setting. Innovation Policy and the Economy, 1, 119-150.Stern, S. (2004). DO Scientists Pay to Be Scientists? Management Science, 50(6), 835-853.
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Patent Family Composition
A patent family groups allapplications andpublications for the sameinvention.
Domestic (SingleJurisdiction) PatentFamily:
all filings made inthe same country
International(Multi-Jurisdiction)Patent Family:
filings made inmultiple countries
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