Can Carbon Trading Policies Promote Regional Green Innovation Efficiency? Empirical Data from Pilot Regions in China
Abstract
:1. Introduction
2. Literature Review and Hypothesis
2.1. Literature Review
2.2. Research Hypothesis
3. Methodology and Models Applied
3.1. Super-Efficient SBM Model
3.2. DID Model
3.3. Selection of Variables and Data Sources
3.3.1. Interpreted Variables
3.3.2. Core Explanatory Variables
3.3.3. Control Variables and Measuring Indicators
GDP Per Capita
R&D Investment Intensity
Carbon Intensity
Energy Structure
Foreign Capital Dependency
3.4. Data Sources
4. Empirical Results and Analysis
4.1. The DID Method of Regression Analysis
4.2. Analysis Using the PSM Method
4.3. Testing and Verification of an Intermediary Influence Mechanism
4.4. Robustness Test for Changing the Sample Interval
5. Conclusions and Policy Implications
5.1. Conclusions
5.2. Policy Implications
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Index | Category | Index Composition | Specific Measurement |
---|---|---|---|
Input indicators | Factor input | R&D expenses | R&D expenditure (ten thousand yuan) |
R&D staff | R&D personnel full-time equivalent (person, year) | ||
Energy resources | Total energy consumption (10,000 tons of standard coal) | ||
Output indicators | Expected output | The level of economic development | GDP per capita (ten thousand yuan, constant price in 2005) |
Knowledge and technology output | Invention patent application authorization volume (pieces) | ||
Product output | New product sales revenue (ten thousand yuan) | ||
Unexpected output | Innovation failure | Year-on-year ratio of non-performing loans of commercial banks (%) | |
Environmental Pollution Index | The entropy weight method is used to calculate the discharge of waste water, waste gas and solid waste |
Variable | Green Innovation Efficiency | ||
---|---|---|---|
(1) | (2) | (3) | |
Ci × Yt | 0.1332 ** (2.39) | 0.0899 ** (2.01) | 0.0498 *** (3.45) |
GDP per capita | −0.3653 * (−1.73) | 0.4929 * (1.86) | |
Research investment | 0.3692 *** (4.62) | 0.3678 *** (4.27) | |
Carbon intensity | −0.4379 * (−1.94) | 0.6479 ** (2.17) | |
Foreign capital dependency | 0.0525 (1.29) | 0.0635 (1.42) | |
energy structure | −0.1103 (−0.43) | 0.0509 * (1.80) | |
Control variable | NO | YES | YES |
Province fixed | YES | YES | YES |
Fixed year | NO | NO | YES |
Constant term | 0.1756 *** (8.10) | −1.2177 *** (−4.54) | −2.6662 *** (−6.44) |
N | 420 | 420 | 420 |
R2 | 0.0374 | 0.3850 | 0.4274 |
Variable | Coefficient | Standard Error | T | P |
---|---|---|---|---|
GDP per capita | 0.2843 ** | 0.1435 | 1.98 | 0.021 |
Research investment | 0.3737 *** | 0.1341 | 2.79 | 0.005 |
Carbon intensity | −0.0215 *** | 0.0070 | −3.06 | 0.002 |
Foreign capital dependency | 0.0062 ** | 0.0002 | 2.14 | 0.030 |
energy structure | −0.7002 *** | 0.2574 | −2.72 | 0.003 |
-cons | 1.8016 *** | 0.6656 | 2.71 | 0.000 |
Green Innovation Efficiency | ||||||
---|---|---|---|---|---|---|
Before Matching | After Matching | Before Matching | After Matching | Before Matching | After Matching | |
Ci × Yt | 0.1332 ** (2.39) | 0.2063 *** (2.67) | 0.0899 ** (2.01) | 0.0149 *** (3.11) | 0.0498 *** (3.45) | 0.0676 ** (2.22) |
GDP per capita | −0.3653 * (−1.73) | 0.0891* (1.91) | 0.4929 * (1.86) | 0.2844 ** (2.30) | ||
Research investment | 0.3692 *** (4.62) | 0.4073 *** (3.44) | 0.3678 *** (4.27) | 0.3737 ** (3.79) | ||
Carbon intensity | −0.4379 * (−1.94) | −0.2137 (−0.01) | 0.6479 ** (2.17) | 0.0215 ** (2.06) | ||
Foreign capital dependency | 0.0525 (1.29) | 0.0006 * (1.81) | 0.0635 (1.42) | 0.0063 * (1.92) | ||
energy structure | −0.1103 (−0.43) | 0.7981 (1.04) | 0.0509 * (1.80) | 0.7002 ** (2.32) | ||
Control variable | NO | NO | YES | YES | YES | YES |
Province fixed | YES | YES | YES | YES | YES | YES |
Fixed year | NO | NO | NO | NO | YES | YES |
Constant term | 0.1756 *** (8.10) | 0.2558 *** (6.35) | −1.2177 *** (−4.54) | −1.1822 *** (−2.76) | −2.6662 *** (−6.44) | −1.8016 *** (−2.71) |
N | 420 | 260 | 420 | 260 | 420 | 260 |
R2 | 0.4274 | 0.8901 | 0.3850 | 0.9225 | 0.4274 | 0.3532 |
Variable | Technological Innovation Effect | Energy Substitution Effect | Structural Upgrading Effect |
---|---|---|---|
Ci × Yt | 0.0162 *** (3.13) | 0.2025 *** (5.21) | 0.0266 *** (4.33) |
N | 420 | 420 | 420 |
R2 | 0.8043 | 0.9012 | 0.8624 |
Variable | Green Innovation Efficiency | ||
---|---|---|---|
Ci × Yt | 0.2308 *** (3.12) | 0.0923 ** (2.10) | 0.0831 *** (4.02) |
Technological innovation | 0.3425 *** (2.90) | ||
Energy substitution | 0.0565 * (1.93) | ||
Structural upgrade | 0.2602 ** (2.08) | ||
N | 420 | 420 | 420 |
R2 | 0.8913 | 0.8265 | 0.9031 |
Variable | Technological Innovation Effect | Energy Substitution Effect | Structural Upgrading Effect | Green Innovation Efficiency |
---|---|---|---|---|
(1) | (2) | (3) | (4) | |
Ci × Yt | 0.5566 *** (5.78) | 0.2119 ** (2.56) | 0.2572 *** (8.04) | |
Technological innovation effect | 0.2522 ** (2.27) | |||
Energy substitution effect | 0.1051 * (1.90) | |||
Structural upgrading effect | 0.1296 * (1.78) | |||
N | 270 | 270 | 270 | 270 |
R2 | 0.7890 | 0.8248 | 0.8932 | 0.9023 |
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Liu, B.; Sun, Z.; Li, H. Can Carbon Trading Policies Promote Regional Green Innovation Efficiency? Empirical Data from Pilot Regions in China. Sustainability 2021, 13, 2891. https://doi.org/10.3390/su13052891
Liu B, Sun Z, Li H. Can Carbon Trading Policies Promote Regional Green Innovation Efficiency? Empirical Data from Pilot Regions in China. Sustainability. 2021; 13(5):2891. https://doi.org/10.3390/su13052891
Chicago/Turabian StyleLiu, Baoliu, Zhenqing Sun, and Huanhuan Li. 2021. "Can Carbon Trading Policies Promote Regional Green Innovation Efficiency? Empirical Data from Pilot Regions in China" Sustainability 13, no. 5: 2891. https://doi.org/10.3390/su13052891
APA StyleLiu, B., Sun, Z., & Li, H. (2021). Can Carbon Trading Policies Promote Regional Green Innovation Efficiency? Empirical Data from Pilot Regions in China. Sustainability, 13(5), 2891. https://doi.org/10.3390/su13052891