Low-Carbon Transition and Green Innovation: Evidence from Pilot Cities in China
Abstract
:1. Introduction
2. Research Review
2.1. Impact of Environmental Policies on Enterprises’ Green Technology Innovation
2.2. Research on Environmental Policies for Low-Carbon Cities
2.3. Impact of Low-Carbon Pilot Policy on Enterprise Green Technology Innovation
3. Theoretical Hypothesis, Model, and Data
3.1. Theoretical Hypothesis Setup
3.2. Model Design
3.3. Data Source and Processing
3.3.1. Variable Description
3.3.2. Data Source and Processing
4. Parallel Trend Test and Empirical Result Analysis
4.1. Parallel Trend Test
4.2. Impact of Low-Carbon Pilot Policy on Enterprise Green Technology Innovation
5. Robustness Test
6. Heterogeneity Test
6.1. Regional Heterogeneity Test
6.2. Heterogeneity Test of Enterprise Ownership
7. Mechanism Research and Analysis
8. Conclusions and Recommendations
8.1. Main Conclusions
8.2. Policy Recommendations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Variable | Measures | Data Source |
---|---|---|
EP | Green patent application volume of listed companies | State Intellectual Property Office of the People’s Republic of China |
REP | Proportion of green patent applications in all patent applications of the listed company | |
Te | Proportion of R&D expenditure of each city in regional financial expenditure | China Urban Statistical Yearbook |
human | The sum of the product of the number of students in primary schools, middle schools and ordinary colleges and universities and their corresponding years of education | |
lnsize | Proportion of the number of independent directors in the total number of directors | CSMAR database |
lndebts | Logarithm of corporate liabilities | |
Top1 | Shareholding ratio of the largest shareholder | |
independ | Proportion of the number of independent directors in the total number of directors | |
ROA | The return on total assets | |
industry | The proportion of regional tertiary industry output value in regional GDP lags behind by one period | China Urban Statistical Yearbook |
lnSO2 | The logarithm of sulfur dioxide emission per unit output value lags by one period |
Variable | Index | Observations | Average | S.D | Min | Max |
---|---|---|---|---|---|---|
EP | Green patent applications | 19,690 | 0.26 | 0.668 | 0 | 5.602 |
REP | Proportion of green patents | 19,690 | 0.033 | 0.106 | 0 | 0.996 |
Te | Technological innovation | 19,690 | 0.016 | 0.014 | 0.002 | 0.057 |
human | Human capital accumulation | 18,050 | 1647.65 | 1944.572 | 35.69 | 15,000 |
lnsize | Logarithm of enterprise scale | 19,689 | 22.134 | 1.512 | 15.418 | 30.952 |
lndebts | Logarithm of corporate liabilities | 19,688 | −0.958 | 0.659 | −4.89 | 4.015 |
Top1 | Ratio of the largest shareholder | 19,690 | 34.998 | 15.212 | 3.003 | 100 |
independ | Independent director proportion | 19,654 | 0.419 | 2.132 | 0.1 | 100 |
ROA | Return on total assets | 19,689 | 0.041 | 0.806 | −5.259 | 108.366 |
industry | Industrial structure | 19,690 | 53.326 | 13.609 | 0 | 80.98 |
lnSO2 | Logarithm of sulfur dioxide emission per unit output value | 19,690 | −7.669 | 1.828 | −14.514 | −2.577 |
Absolute Value of Green Patent Applications | Relative Value of Green Patent Applications | |||||
---|---|---|---|---|---|---|
EP | EIP | EUP | REP | REIP | REUP | |
(1) | (2) | (3) | (4) | (5) | (6) | |
D_5 | 0.00494 | −0.00881 | 0.0126 | 0.00124 | 0.00399 | −0.000224 |
(0.0264) | (0.0201) | (0.0164) | (0.00639) | (0.00556) | (0.00411) | |
D_4 | 0.0159 | 0.0158 | 0.000905 | 6.61 × 10−5 | 0.00126 | −0.00154 |
(0.0222) | (0.0153) | (0.0169) | (0.00234) | (0.00246) | (0.00225) | |
D_3 | 0.00546 | 0.00934 | −0.00437 | −0.000667 | −9.28 × 10−5 | −0.00288 |
(0.0178) | (0.0144) | (0.0132) | (0.00242) | (0.00323) | (0.00207) | |
D_2 | 0.00673 | 0.0112 | −0.00496 | 0.000607 | 0.00226 | −0.00169 |
(0.0202) | (0.0176) | (0.0124) | (0.00317) | (0.00352) | (0.00247) | |
D0 | 0.00291 | 0.00663 | −0.0134 | 0.000287 | 0.00122 | −0.000305 |
(0.0214) | (0.0177) | (0.0134) | (0.00288) | (0.00294) | (0.00213) | |
D1 | −6.40 × 10−5 | −0.00290 | −0.00495 | 0.000190 | 0.00114 | −0.000899 |
(0.0182) | (0.0166) | (0.0119) | (0.00257) | (0.00301) | (0.00173) | |
D2 | −0.00347 | −0.000727 | −0.0120 | 0.00127 | 0.00303 | −0.00104 |
(0.0243) | (0.0197) | (0.0168) | (0.00275) | (0.00365) | (0.00240) | |
D3 | −0.0222 | −0.0163 | −0.0199 | 0.000528 | 0.00148 | −0.00142 |
(0.0210) | (0.0158) | (0.0138) | (0.00304) | (0.00336) | (0.00251) | |
D4 | −0.0178 | −0.0104 | −0.0182 | 0.00105 | 0.00172 | 2.14 × 10−5 |
(0.0197) | (0.0134) | (0.0180) | (0.00214) | (0.00249) | (0.00214) | |
D5 | −0.0228 | −0.0162 | −0.0106 | −0.00164 | −0.00129 | −0.00115 |
(0.0163) | (0.0120) | (0.0170) | (0.00292) | (0.00306) | (0.00259) | |
Control variable | Yes | Yes | Yes | Yes | Yes | Yes |
Constant | 1.255 *** | 0.817 *** | 0.916 *** | 0.145 *** | 0.143 *** | 0.111 *** |
(0.0728) | (0.0489) | (0.0612) | (0.0102) | (0.0115) | (0.00538) | |
time fixed effect | Yes | Yes | Yes | Yes | Yes | Yes |
industry fixed effect | Yes | Yes | Yes | Yes | Yes | Yes |
province fixed effect | Yes | Yes | Yes | Yes | Yes | Yes |
Observations | 19,690 | 19,690 | 19,690 | 19,690 | 19,690 | 19,690 |
EP | EIP | EUP | ||||
---|---|---|---|---|---|---|
(1) | (2) | (3) | (4) | (5) | (6) | |
Dr.t | 0.0225 | 0.0468 *** | 0.0142 | 0.0385 ** | 0.00697 | 0.0209 * |
(0.0153) | (0.0174) | (0.0144) | (0.0171) | (0.00986) | (0.0126) | |
lnsize_ | 0.0603 *** | 0.0604 *** | 0.0503 *** | 0.0499 *** | 0.0344 *** | 0.0367 *** |
(0.00644) | (0.00678) | (0.00529) | (0.00500) | (0.00461) | (0.00524) | |
lndebts_ | 0.0254 *** | 0.0220 *** | 0.0180 ** | 0.0143 * | 0.0175 *** | 0.0170 *** |
(0.00820) | (0.00772) | (0.00777) | (0.00743) | (0.00519) | (0.00515) | |
independ | −0.000173 | −0.000350 | 3.95 × 10−5 | −0.000496 ** | −0.000355 | −4.41 × 10−5 |
(0.000342) | (0.000331) | (0.000250) | (0.000237) | (0.000237) | (0.000236) | |
Top1 | −0.000550 | −0.000409 | −0.000267 | −0.000131 | −0.000423 | −0.000375 |
(0.000575) | (0.000545) | (0.000456) | (0.000434) | (0.000369) | (0.000357) | |
ROA | −0.00110 | 0.00165 | 0.000188 | 0.00288 * | −0.00171 ** | −4.35 × 10−5 |
(0.00144) | (0.00216) | (0.00133) | (0.00170) | (0.000832) | (0.00132) | |
industry | 0.000551 | 0.00107 | 0.00108 | 0.00160 | 7.16 × 10−5 | 0.000420 |
(0.00167) | (0.00189) | (0.00120) | (0.00134) | (0.00118) | (0.00138) | |
lnSO2_ | −0.000381 | −0.0269 ** | −0.000429 | −0.0259 ** | −0.00471 | −0.0103 |
(0.00540) | (0.0113) | (0.00439) | (0.0108) | (0.00350) | (0.00629) | |
Constant | −1.284 *** | −1.317 *** | −1.131 *** | −1.206 *** | −0.734 *** | −0.725 *** |
(0.204) | (0.229) | (0.158) | (0.172) | (0.140) | (0.162) | |
time fixed effect | Yes | Yes | Yes | Yes | Yes | Yes |
province fixed effect | Yes | Yes | Yes | Yes | Yes | Yes |
industry fixed effect | Yes | Yes | Yes | Yes | Yes | Yes |
province × time fixed effect | No | Yes | No | Yes | No | Yes |
industry × time fixed effect | No | Yes | No | Yes | No | Yes |
Observations | 16,690 | 16,690 | 16,690 | 16,690 | 16,690 | 16,690 |
REP | REIP | REUP | |
---|---|---|---|
(1) | (2) | (3) | |
Dr.t | 0.00597 ** | 0.00631 * | 0.00394 * |
(0.00245) | (0.00329) | (0.00233) | |
Control variable | Yes | Yes | Yes |
Fixed effect | Yes | Yes | Yes |
v2 | v3 | v4 | |
Constant | −0.109 *** | −0.128 *** | −0.0488 *** |
(0.0229) | (0.0259) | (0.0166) | |
Observations | 16,690 | 16,690 | 16,690 |
East | Central | West | |||||||
---|---|---|---|---|---|---|---|---|---|
EP | EIP | EUP | EP | EIP | EUP | EP | EIP | EUP | |
(1) | (2) | (3) | (4) | (5) | (6) | (7) | (8) | (9) | |
Dr.t | 0.041 ** | 0.037 ** | 0.0143 | 0.0665 | 0.0538 | 0.0187 | 0.0577 | −0.00689 | 0.100 *** |
(0.019) | (0.019) | (0.0140) | (0.0567) | (0.0539) | (0.0365) | (0.073) | (0.0677) | (0.0331) | |
Control variable | Yes | Yes | Yes | Yes | Yes | Yes | Yes | Yes | Yes |
Fixed effect | Yes | Yes | Yes | Yes | Yes | Yes | Yes | Yes | Yes |
Observations | 12,295 | 12,295 | 12,295 | 2879 | 2879 | 2879 | 1264 | 1264 | 1264 |
EP | EIP | EUP | ||||
---|---|---|---|---|---|---|
Non-State-Owned Enterprises (1) | State-Owned Enterprises (2) | Non-State-Owned Enterprises (3) | State-Owned Enterprises (4) | Non-State-Owned Enterprises (5) | State-Owned Enterprises (6) | |
Dr.t | 0.0433 ** | 0.0635 ** | 0.0420 * | 0.0475 * | 0.0168 | 0.0311 |
Control variable | Yes | Yes | Yes | Yes | Yes | Yes |
Fixed effect | Yes | Yes | Yes | Yes | Yes | Yes |
Observations | 9850 | 6840 | 9850 | 6840 | 9850 | 6840 |
Technological Innovation | Human Capital | |||||
---|---|---|---|---|---|---|
te | EP | REP | Human | EP | REP | |
Dr.t#te | 1.111 ** | 0.14 | ||||
−0.512 | −0.0924 | |||||
Dr.t#human | 1.33 × 10−5 | 2.48 × 10−6 *** | ||||
−9.35 × 10−6 | −9.59 × 10−7 | |||||
Control variable | Yes | Yes | Yes | Yes | Yes | Yes |
Fixed effect | Yes | Yes | Yes | Yes | Yes | Yes |
Observations | 16,690 | 16,690 | 16,690 | 16,690 | 16,690 | 16,690 |
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Wang, T.; Song, Z.; Zhou, J.; Sun, H.; Liu, F. Low-Carbon Transition and Green Innovation: Evidence from Pilot Cities in China. Sustainability 2022, 14, 7264. https://doi.org/10.3390/su14127264
Wang T, Song Z, Zhou J, Sun H, Liu F. Low-Carbon Transition and Green Innovation: Evidence from Pilot Cities in China. Sustainability. 2022; 14(12):7264. https://doi.org/10.3390/su14127264
Chicago/Turabian StyleWang, Taohong, Zhe Song, Jing Zhou, Huaping Sun, and Fengqin Liu. 2022. "Low-Carbon Transition and Green Innovation: Evidence from Pilot Cities in China" Sustainability 14, no. 12: 7264. https://doi.org/10.3390/su14127264
APA StyleWang, T., Song, Z., Zhou, J., Sun, H., & Liu, F. (2022). Low-Carbon Transition and Green Innovation: Evidence from Pilot Cities in China. Sustainability, 14(12), 7264. https://doi.org/10.3390/su14127264