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Does foreign environmental policy influence domestic innovation? Evidence from the wind industry Antoine Dechezleprêtre, LSE Matthieu Glachant, Mines ParisTech Motivation The empirical literature has extensively shown that environmental regulation fosters innovation in environmentally-friendly technologies Jaffe & Palmer, 1997; Brunnermeier & Cohen, 2003 ; Newell et al, 1999; Popp, 2002 But most papers assess the impact of domestic regulation on domestic innovation Innovators are likely to be influenced not only by domestic but also by foreign policies The market for technologies is global: 49% of wind power patents are filed by non-residents The literature on cross border effects of policies A few descriptive papers, but a lack of econometric analysis: Lanjouw & Mody (1996): vehicles emissions regulations in the US spurred innovation in Germany and Japan Popp (2006): Inventors of air pollution control devices for coal-fired power plants do not respond to foreign environmental regulation Popp, Haffner, Johnstone (2007) : domestic and foreign regulation influence innovation in chlorine-free technology in the pulp and paper industry Research questions Does foreign wind policies encourage domestic innovation? If so, the empirical literature under-estimates the overall effect of environmental policies We distinguish between: Demand-pull policies encouraging the deployment of new turbines Feed-in tariffs, renewable portfolio standards… Technology-push policies encouraging innovation Public support to R&D Policy relevance Environmental policies are also sold by politicians as a tool to achieve technological leadership of domestic firms But domestic policies might also help foreign competitors Ex: Spain’s solar policy has strongly benefited Chinese producers Wind power today 160 GW of worldwide installed capacity in 2009 +30% annually since 2000 2% of global electricity generation Some countries with high levels of penetration: Denmark (20%), Portugal and Spain (14%), Ireland (11%), Germany (8%) A policy driven development Guaranteed tariffs (feed-in tariffs) Investment tax credits Mandatory production quotas R&D tax credits Data A panel of 28 OECD countries, 1995-2006 Innovation Demand-pull policies Patent data from the EPO World Patent Statistical database (PATSTAT) 15,835 patent applications Annual installations of new wind power capacities (IEA) Technology-push policies Public R&D expenditures (IEA) Econometric framework We estimate the following equation: log N i ,t 1 log capi*,t 1 2 log cap* i ,t 1 1 log rdi ,t 2 log rd i ,t X i ,t t i i ,t Nit is the number of patents filed by inventors from country i in year t capi,t+1* is the expectation in year t of the capacity which will be added in country i in year t + 1 cap-i,t+1* is the the same for capacities in the rest of the world rdi and rd-i are public R&D expenditures at home and abroad Control variables Knowledge stocks: discounted stock of previous patents Time trend (time dummies not possible) Global level of IPR GDP Country fixed-effects Why expected installations? Because inventors’ decisions are based on expectations about future demand Problem: Expectations are not observed in the data Solution: We assume the innovators form adaptive expectations, so that the expected cap is current cap + weighted average of past increases in installations : capi*,t 1 capi ,t (1 ) k (capi ,t k capi ,t k 1 ) k 0 Endogeneity of rdi,t Domestic R&D expenditures are inputs of the innovation process A simultaneity problem We instrument rdi,t with R&D expenditures in solar power, biomass and geothermal uncorrelated with wind innovation because very different technologies correlated with wind R&D because jointness of policy decisions Results (1) (2) IV OLS OLS log capi*,t 1 0.0505** (0.0224) 0.0546** (0.0234) 0.0586*** (0.0207) log cap *i ,t 1 0.4849*** 0.4771*** 0.4396*** (0.1625) 0.3853** (0.1630) -0.0508 (0.3669) 0.3576** (0.1669) (0.1556) 0.1319 (0.1052) -0.2943 (0.3919) 0.4842*** (0.1770) (0.1677) 0.0127 (0.0700) -0.6209* (0.3212) 0.3759*** (0.0985) yes yes yes 336 28 yes yes yes 336 28 yes yes yes 336 28 log rdi ,t log rd i ,t log K i ,t Controls for GDP & IPR Country fixed effects Time trend Observations Countries (3) Negative binomial Tests First-stage model statistics of the IV – OLS model Test of overidentifying restrictions The Hansen J statistics = 0.198 Hence, the instruments satisfy the orthogonality conditions. Test for the endogeneity with a “difference in Sargan” statistics which is robust to clustering. Instruments are relevant. The Shea partial R-square is 0.2085 and the cluster-robust F-statistics of joint significance of the instrument variables is 5.33. Endogeneity hypothesis is weakly rejected (the p-value of the Chi-square test is 0.1303). Autocorrelation Use robust standard errors Results (1) (2) IV OLS OLS log capi*,t 1 0.0505** (0.0224) 0.0546** (0.0234) 0.0586*** (0.0207) log cap *i ,t 1 0.4849*** 0.4771*** 0.4396*** (0.1625) 0.3853** (0.1630) -0.0508 (0.3669) 0.3576** (0.1669) (0.1556) 0.1319 (0.1052) -0.2943 (0.3919) 0.4842*** (0.1770) (0.1677) 0.0127 (0.0700) -0.6209* (0.3212) 0.3759*** (0.0985) yes yes yes 336 28 yes yes yes 336 28 yes yes yes 336 28 log rdi ,t log rd i ,t log K i ,t Controls for GDP & IPR Country fixed effects Time trend Observations Countries (3) Negative binomial Local & foreign regulation influence innovation Foreign public R&D has no impact Marginal effects of demand +1 MW at home +1 MW abroad A factor of 28 = + 0.0223 invention = + 0.0008 invention There exist barriers to technology diffusion which discourage innovation Policies to increase technology transfer also increase innovation The total effect of 1 MW Our data set includes 28 countries Hence 1MW induces 0.0008 * 27 ≈ 0.022 foreign invention worldwide Demand-pull policies have a comparable aggregate impact on domestic and foreign innovation Marginal effects of domestic R&D Marginal effects of domestic public R&D expenditures +1 million USD = + 0.82 invention Tech-push vs demand-pull The innovation impact of 1 million USD: Effect of 1 million USD spent on: Public R&D expenditures New capacities Home 0.82 invention 0.03 invention Abroad 0 0.03 invention Global 0.82 invention 0.06 invention Assumptions: Installing 1 MW costs 0.65 million USD relative to conventional electricity Innovation has to be seen as an ancillary benefit of demand-pull policies Conclusion Foreign demand policies influence innovation The marginal effect is 28 times less than the effect of domestic installations But the total effect of foreign installations is the same as that of domestic installations Removing barriers to international diffusion is key Existing studies strongly underestimate the overall impact of env’l policies on innovation Foreign public R&D has no significant impacts 1 million USD spent in subsidizing new turbines induces 14 times less patents than 1 million USD of domestic R&D Robustness checks (1) log capid,t * log capif,t * log rdid,t log rdi,ft log Ki ,t GDP, IPR Country FE Time trend Observatio ns Countries (1) (2) (3) (4) (5) λ = 0.65 λ = 0.85 = 0.15 = 0.2 Drop Japan 0.0491** (0.0210) 0.4601*** (0.1560) 0.3835** (0.1628) -0.0885 (0.3711) 0.3582** (0.1671) 0.0523** (0.0235) 0.5112*** (0.1694) 0.3895** (0.1627) -0.0205 (0.3641) 0.3563** (0.1665) 0.0473** (0.0216) 0.4739*** (0.1590) 0.3440** (0.1535) -0.0730 (0.3566) 0.3919*** (0.1428) 0.0444** (0.0211) 0.4617*** (0.1561) 0.3182** (0.1456) -0.0798 (0.3478) 0.3998*** (0.1225) 0.0442* (0.0227) 0.4714*** (0.1626) 0.2937* (0.1590) -0.0486 (0.3749) 0.3839** (0.1737) yes yes yes yes yes yes yes yes yes yes yes yes yes yes yes 336 336 336 336 324 28 28 28 28 27 Robustness checks (2) log capid,t * log capif,t * log rdid,t log rdi,ft log Ki ,t GDP, IPR Country FE Time trend Observatio ns Countries (1) (2) (3) (4) (5) R&D t-1 R&D t+1 t2 log(t) add K-i 0.0535** (0.0252) 0.4733*** (0.1475) 0.0858 (0.1882) 0.1362 (0.4079) 0.5267*** (0.1753) 0.0516** (0.0243) 0.5131*** (0.1616) 0.3434** (0.1497) 0.3247 (0.3524) 0.3215* (0.1708) 0.0505** (0.0224) 0.4846*** (0.1624) 0.3853** (0.1630) -0.0491 (0.3676) 0.3577** (0.1669) 0.0505** (0.0224) 0.4851*** (0.1626) 0.3852** (0.1630) -0.0526 (0.3661) 0.3576** (0.1669) — — — — 0.0475** (0.0214) 0.3853** (0.1856) 0.3779** (0.1577) 0.1774 (0.4594) 0.3539** (0.1683) -0.9120 (0.9673) yes yes yes yes yes yes yes yes yes yes yes yes yes yes yes 336 331 336 336 336 28 28 28 28 28 Thank you