Green Technological Progress and the Backwardness Advantage of Green Development: Taking the Sustainable Development Strategy of Central and Western China as an Example
Abstract
:1. Introduction
2. Materials and Methods
2.1. Theoretical Analysis
2.2. Empirical Model and Variables
2.3. Estimation Method
3. Results and Discussion
3.1. Estimation and Analysis of GTP
3.1.1. Overall Estimation and Result Analysis
3.1.2. Regional Estimation and Result Analysis
3.2. Estimation and Analysis of the Backwardness Advantage of Green Development in the CW-Regions
3.3. Discussion
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Item | Educational Expenditure per Student | The Ratio of the Population with at Least Higher Education | Labor Employment | The Loan Balance of Financial Institutions | Per Capita GDP | Technological Progress | Green Technological Progress |
---|---|---|---|---|---|---|---|
Eastern region | 12.0482 | 10.4952 | 1.571 | 16.526 | 9.352 | 4.4436 | 5.7655 |
Central region | 12.4220 | 14.0071 | 1.080 | 14.820 | 10.160 | 2.6733 | 3.8185 |
Western region | 13.5318 | 11.3515 | 1.188 | 16.183 | 9.988 | 1.8966 | 2.8753 |
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Variables | Symbol | Variable Description |
---|---|---|
Per capita Green GDP | GGDP | The method of Tan and Wen [50] is used to estimate the environmental pollution losses including main pollutants in China based on 1995. The various resource consumption losses in China based on 1995 are estimated referring to Wen [51]. Green GDP is calculated by gross regional product subtracting environmental pollution losses and resource consumption losses based on 1995. Then per capita green GDP is calculated by dividing the green GDP by the permanent population of each province. |
Green technological progress | GTP | GTP is measured by green total factor productivity according to Jing and Zhang [10] (Jing and Zhang [10] pointed out that many studies decomposed total factor productivity into technological changes and efficiency changes, but they believe that technological progress should be measured by the sum of the two. The reason is that on the one hand, technological change actually measures the total factor productivity change at the sample frontier, and it is not reasonable to measure technological progress by the frontier productivity change; on the other hand, the change in efficiency reflects the absorbing ability to current technological knowledge, which is also a manifestation of technological progress. Reflecting technological progress as the continuous process of each decision-making unit’s pursuit of global frontier technologies is a more reasonable measurement), using the method of Chung et al. [9] to calculate the ML index of green total factor productivity. The input variables are capital stock, employees, and energy consumption. The output variables include the expected output of the gross regional product based on 1995 and the undesired output of CO2 emissions, COD emissions, and SO2 emissions. Finally, the cumulative multiplication method of Yuan [52] is used to obtain GTP. |
Human capital level | H | The human capital level is estimated by the average years of education referring to Ma et al. [6]. |
Environmental regulation | E | GDP/energy consumption is set as a proxy variable for environmental regulation referring to Ma et al. [6] and Wen and Dai [53]. Energy consumption is converted into standard coal, and then, the GDP of each province based on 1995 is divided by the energy input. |
Trade openness | Tr | It is indicated by total import and export volume, which is adjusted to the constant price in 1995 by the United States CPI and then converted into RMB yuan based on the average exchange rate in 1995. |
R&D investment | RD | It is estimated by the perpetual inventory method of Li et al. [54], taking R&D stock in 1995 as the initial amount, with a depreciation rate of 15%. The newly added R&D is converted to the constant price in 1995 based on the average CPI and PPI. |
Environmental pollution 1: CO2 | P_CO2 | The carbon dioxide emission is estimated by the consumption of coal, oil, and natural gas referring to Chen [55]. |
Environmental pollution 2: COD | P_COD | It is the emissions of chemical oxygen demand of each province. |
Environmental pollution 3: Comprehensive loss of environmental pollution | P_pul | The comprehensive loss of environmental pollution is calculated by the emission of major pollutants referring to Tan and Wen [47], and Wen and Dai [45] and converted to the constant price in 1995 by PPI. |
Resident income level | W | The average wage of urban employees in each province in the current year is selected and converted into the constant price in 1995. |
Physical capital | K | It is calculated based on the method of Zhang [56] and Wen and Dai [45], in which the investment price index is measured by the fixed assets investment price index based on 1995. |
Foreign direct investment | FDI | FDI stock is calculated by the above formula of Zhang [56], with the FDI stock in 1995 as the initial volume and the depreciation rate selected at 7.5%. The newly added FDI is converted to RMB yuan at the annual average exchange rate in 1995, and the price index is based on the United States CPI. |
Employment | L | It is the total employed population in each province of the year. |
Variables | Mean Value | Median Value | Standard Deviation | Minimum Value | Maximum Value | Number of Observations |
---|---|---|---|---|---|---|
ln GGDPit | 9.380 | 9.392 | 0.873 | 7.000 | 11.449 | 667 |
GTPit | 4.232 | 2.460 | 4.963 | 0.892 | 73.86 | 667 |
Hit | 2.090 | 2.101 | 0.149 | 1.546 | 2.526 | 667 |
ln Eit | 8.735 | 8.780 | 0.538 | 7.400 | 9.793 | 667 |
Trit | 6.756 | 6.720 | 1.817 | 2.109 | 10.99 | 667 |
ln FDIit | 6.017 | 6.149 | 1.727 | −3.042 | 9.098 | 667 |
ln RDit | −0.148 | −0.140 | 0.874 | −3.760 | 2.130 | 667 |
ln P_CO2it | 9.697 | 9.760 | 0.924 | 6.430 | 11.650 | 667 |
ln P_CODit | 3.675 | 3.770 | 0.817 | 1.160 | 5.290 | 667 |
ln P_pulit | 5.271 | 5.354 | 1.010 | 1.744 | 7.412 | 667 |
ln Wit | 9.670 | 9.727 | 0.739 | 8.327 | 11.26 | 667 |
ln Kit | 9.470 | 9.447 | 1.124 | 6.354 | 11.97 | 667 |
ln Lit | 7.525 | 7.634 | 0.839 | 5.483 | 8.820 | 667 |
Variables | Environmental Pollution of P_COD | Environmental Pollution of P_CO2 | Environmental Pollution of P_pul |
---|---|---|---|
ln Hit | 7.1198 *** | 3.2034 *** | 2.4522 |
(4.41) | (3.34) | (1.47) | |
ln Eit | −219.5220 *** | −159.8766 *** | −97.4303 *** |
(−8.31) | (−13.65) | (−3.36) | |
ln E2it | 12.7615 *** | 8.9435 *** | 5.4235 *** |
(7.98) | (11.51) | (3.04) | |
ln Trit | −4.1314 | −19.0594 *** | −17.5104 *** |
(−1.32) | (−4.73) | (−3.58) | |
ln Trit*ln Eit | 0.3079 | 1.9553 *** | 1.7456 *** |
(0.88) | (4.33) | (3.26) | |
ln FDIit | 0.6045 | −0.5754 * | 0.1294 |
(1.44) | (−1.78) | (0.26) | |
ln RDit | 2.7703 *** | 2.1359 *** | 0.4776 * |
(9.41) | (6.23) | (1.69) | |
ln Pit | 1.5386 *** | 3.3220 *** | 4.2610 *** |
(4.16) | (7.08) | (11.70) | |
Constant | 930.1656 *** | 692.6568 *** | 424.8056 *** |
(8.61) | (15.33) | (3.56) | |
Wald test | 714.17 (0.000) | 1225.33 (0.000) | 574.72 (0.000) |
AR(2)test | 1.41 (0.158) | 1.38 (0.169) | 1.61 (0.107) |
Hansen test | 27.07 (0.301) | 25.30 (0.711) | 21.34 (0.126) |
DHT for instruments (a) GMM instruments for levels H excluding group Dif (null H = exogenous) | 0.51 (0.972) | 1.67 (0.893) | 1.63 (0.898) |
(b) IV (Years, eq (diff)) H excluding group Dif (null H = exogenus) | 4.38 (0.356) | 2.07 (0.556) | 0.18 (0.981) |
Number of Instruments | 33 | 39 | 24 |
Number of Provinces | 29 | 29 | 29 |
obs | 609 | 580 | 580 |
Variables | The Eastern Region | The Central Region | The Western Region |
---|---|---|---|
ln Hit | 25.8061 *** | 26.2688 *** | 26.1148 *** |
(3.50) | (2.71) | (2.77) | |
ln Eit | −604.0252 ** | −191.6102 *** | −76.7075 |
(−2.28) | (−2.87) | (−1.08) | |
ln E2it | 33.7569 ** | 11.2762 *** | 4.6435 |
(2.30) | (2.97) | (1.09) | |
ln Trit | −6.3235 * | −22.1718 | −20.5646 * |
(−1.83) | (−0.73) | (−1.88) | |
ln Trit*ln Eit | 0.9258 * | 3.0526 | 2.7891 * |
(1.88) | (1.37) | (1.76) | |
ln FDIit | −1.8942 ** | −1.3688 | 0.3844 |
(2.34) | (−1.58) | (0.77) | |
ln RDit | 5.3393 | 3. 5911 | 1.4912 ** |
(1.49) | (1.12) | (2.29) | |
ln P_CO2 it | 2.0068 | 5.6610 *** | 6.2578 *** |
(0.86) | (4.02) | (5.66) | |
Constant | 1320.5511 *** | 1910.1564 *** | 956.6548 *** |
(9.16) | (11.25) | (5.25) | |
Wald test | 31.54 (0.000) | 293.77 (0.000) | 31.62 (0.000) |
AR(2) test | 1.13 (0.260) | 1.17 (0.241) | 0.85 (0.395) |
Hansen test | 7.79 (0.100) | 4.79 (0.780) | 0.77 (0.679) |
DHT for instruments (a) GMM instruments for levels H excluding group Dif (null H = exogenous) | 1.09 (0.297) | 0.50 (0.778) | 0.69 (0.407) |
(b) IV (Years, eq (diff)) H excluding group Dif (null H = exogenus) | 3.89 (0.274) | 2.74 (0.254) | 0.09 (0.770) |
Number of Instruments | 9 | 13 | 7 |
Number of Provinces | 11 | 8 | 10 |
obs | 220 | 160 | 200 |
Variables | Model (10) | Model (11) | Model (12) |
---|---|---|---|
ln GGDPit−1 | 1.0711 *** | 1.1169 *** | 1.1249 *** |
(79.26) | (60.28) | (55.57) | |
ln Wit−1 | −0.0279 *** | −0.0568 *** | −0.0656 *** |
(−3.23) | (−4.28) | (−4.34) | |
GTPit−1 | 0.0010 *** | 0.0013 ** | |
(2.73) | (2.13) | ||
GTPit−1*east | 0.0019 *** | ||
(2.79) | |||
GTPit−1*Backwardi_mid | 0.0022 *** | 0.0046 *** | |
(3.17) | (4.19) | ||
GTPit−1*Backwardi_west | 0.0020 * | 0.0031 *** | |
(1.83) | (2.77) | ||
ln Hit | 0.0697 *** | 0.0800 *** | 0.1075 * |
(3.44) | (3.48) | (1.70) | |
ln Eit | −0.1338 *** | −0.1208 *** | −0.1452 *** |
(−13.56) | (−5.67) | (−7.51) | |
ln Kit | −0.0284 *** | −0.0571 *** | −0.0558 *** |
(−2.82) | (−4.48) | (−4.20) | |
ln Lit | 0.0515 *** | 0.0581 *** | 0.0640 *** |
(5.79) | (4.91) | (5.70) | |
Constant | 0.6124 *** | 0.5468 *** | 0.6507 *** |
(5.29) | (4.35) | (4.95) | |
Wald test | 205,006 (0.000) | 223,141.21 (0.000) | 213,607.94 (0.000) |
AR(2) test | −1.37 (0.172) | −1.43 (0.152) | −1.41 (0.160) |
Hansen test | 22.98 (0.816) | 18.07 (0.204) | 20.13 (0.126) |
DHT for instruments (a) GMM instruments for levels H excluding group Dif (null H = exogenous) | 1.32 (0.933) | 8.41 (0.298) | 11.53 (0.117) |
(b) IV (Years, eq (diff)) H excluding group Dif (null H = exogenus) | 2.12 (0.347) | 4.27 (0.118) | 2.67 (0.264) |
Number of Instruments | 21 | 24 | 24 |
Number of Provinces | 29 | 29 | 29 |
obs | 609 | 609 | 609 |
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Wen, H.; Dai, J. Green Technological Progress and the Backwardness Advantage of Green Development: Taking the Sustainable Development Strategy of Central and Western China as an Example. Sustainability 2021, 13, 7567. https://doi.org/10.3390/su13147567
Wen H, Dai J. Green Technological Progress and the Backwardness Advantage of Green Development: Taking the Sustainable Development Strategy of Central and Western China as an Example. Sustainability. 2021; 13(14):7567. https://doi.org/10.3390/su13147567
Chicago/Turabian StyleWen, Huaide, and Jun Dai. 2021. "Green Technological Progress and the Backwardness Advantage of Green Development: Taking the Sustainable Development Strategy of Central and Western China as an Example" Sustainability 13, no. 14: 7567. https://doi.org/10.3390/su13147567
APA StyleWen, H., & Dai, J. (2021). Green Technological Progress and the Backwardness Advantage of Green Development: Taking the Sustainable Development Strategy of Central and Western China as an Example. Sustainability, 13(14), 7567. https://doi.org/10.3390/su13147567