Spatial Heterogeneity Influences of Environmental Control and Informal Regulation on Air Pollutant Emissions in China
Abstract
:1. Introduction
2. Literature Review
2.1. Air Pollution Control Policy
2.2. Informal Environmental Regulation
2.3. Comments
3. Research Design
3.1. Non-Spatial Econometric Model
3.2. Spatial Estimation Method
4. Variables and Data
4.1. Air Pollutant Emissions
4.2. Air Pollution Control Policy
4.3. Informal Environmental Regulation
4.4. Control Variables
- (1)
- Economic development. GDP is the representative of economic growth and has a direct impact on air pollutant emissions [31]. Compared with underdeveloped areas, areas with higher economic development usually have more resources and capabilities for environmental governance. To control the impact of per capita economic scale on air pollutant emissions, we control the per capita GDP (PGDP) in this paper.
- (2)
- Industrial structure. The industrial layout and industrial development scale are closely related to environmental quality. Different industrial structures correspond to different pollution discharge structures [5]. We use the industrial structure (IND) variable, calculated as the proportion of the secondary industry’s GDP to the total GDP, to control the impact of regional industrialization development on air pollutant emissions.
- (3)
- S&T expenditure. Previous studies have shown that S&T has a positive impact on environmental protection [32]. Based on this, we construct the technology expenditure ratio (TEC) variable to control the impact of S&T expenditure on air pollutant emissions by calculating the proportion of provincial government S&T expenditure to the total fiscal expenditure of the year.
- (4)
- Energy consumption. Energy consumption is a key factor affecting air pollutant emissions. Al-Mulali and Ozturk [33] found that energy consumption and air pollution showed a positive long-term two-way relationship. To control the impact of energy consumption on air pollutant emissions, we use the per capita energy consumption (PEC) for control.
- (5)
- Population density. Population size is one of the biggest drivers of atmospheric pollutant emissions [31]. Considering the large differences in administrative divisions and population size between provinces, the direct use of absolute population indicators is not scientifically comparable. Therefore, we use population density (PPOP), the population per unit area, to characterize the impact of population agglomeration on air pollutant emissions.
- (6)
- The degree of opening-up. The degree of opening-up reflected by FDI is an essential factor for China’s environmental pollution research. Existing research shows that the direction of FDI impact on environmental quality is not certain. For example, Pollution Halo Hypothesis suggests that FDI can improve environmental quality by introducing environmentally friendly technologies and products [34], but Pollution Haven Hypothesis argues that FDI can deteriorate its environmental quality by transferring highly polluting industries to host countries [44]. We use the proportion of FDI in GDP to measure the degree of opening-up to examine its impact on China’s air pollutant emissions.
4.5. Descriptive Statistics
5. Results and Discussion
5.1. Spatial Regression Analysis
5.2. Discussions
5.3. Robust Tests
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
References
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Scores | Quantitative Criterion | |
---|---|---|
5 | Make sure the legal status or enforced requirements for reducing and preventing the atmospheric pollutant emissions; formulate mandatory standards for reducing the atmospheric pollutant emissions; forcibly require strictly implementing environmental impact assessment, formulating prevention of pollution program and implementing “three simultaneousness” system; enforce to implement charging discharge fees system, establish new credit or price punitive system for pollution projects, require eliminating equipment of high pollution and high emissions; require formulating relevant policies to promote air pollution prevention and control from the legislation; formulate enforced methods to promote preventing air pollution, etc. | Detailed |
3 | Clearly require reducing atmospheric pollutant emissions, formulate specific embodiment of air pollution prevention; support pollution prevention and control from the aspects of administrative licensing, taxation, finance and fees, and also formulate support program; forcibly require strictly implementing environmental impact assessment, formulating prevention of pollution program and implementing “three simultaneousness” system; have formulated pollutant recycling program and program for eliminating equipment of high pollution and high emissions; have formulated a clear air pollution prevention and control goals, but not required to enforce, etc. | General |
1 | Only mention the above terms without formulated relevant measures and methods. | Mentioned |
Type | Variable | Variable Name | Data Source |
---|---|---|---|
Air pollutant emissions | PSO2 | SO2 emission intensity | China Environment Yearbook Website: (https://navi.cnki.net/KNavi/YearbookDetail?pcode=CYFD&pykm=YHJSD&bh=) |
PSD | SD emission intensity | ||
Air pollution control policy | PSPE | Air pollution control policy intensity | Policy quantification [20] and China Environment Yearbook Website: (https://navi.cnki.net/KNavi/YearbookDetail?pcode=CYFD&pykm=YHJSD&bh=) |
Informal environmental regulation | PPTC | Public environmental participation | China Environment Yearbook Website: (https://navi.cnki.net/KNavi/YearbookDetail?pcode=CYFD&pykm=YHJSD&bh=) |
SEE | Media environmental monitoring | ||
Control variables | PGDP | Per capita GDP | China Statistical Yearbook Website: (http://www.stats.gov.cn/tjsj/ndsj/) |
IND | Industrial structure | ||
TEC | Technology expenditure ratio | ||
PEC | Per capita energy consumption | ||
PPOP | Population density | ||
FDI | Degree of opening-up |
Variables | Mean | SD | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 | 11 |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
1. PSO2# | 3.458 | 1.139 | 1.000 | ||||||||||
2. PSD# | 3.074 | 1.005 | 0.925 *** | 1.000 | |||||||||
3. PSPE# | 12.620 | 0.505 | −0.239 *** | −0.123 ** | 1.000 | ||||||||
4. PPTC# | 7.037 | 3.438 | 0.368 *** | 0.269 *** | −0.579 *** | 1.000 | |||||||
5. SEE# | 2.167 | 1.186 | 0.373 *** | 0.317 *** | −0.205 *** | 0.123 ** | 1.000 | ||||||
6. PGDP# | 5.660 | 0.562 | 0.264 *** | 0.305 *** | 0.447 *** | −0.280 *** | 0.161 *** | 1.000 | |||||
7. IND | 0.464 | 0.081 | 0.177 *** | 0.172 *** | −0.060 | 0.372 *** | −0.055 | −0.176 *** | 1.000 | ||||
8. TEC | 0.019 | 0.013 | 0.486 *** | 0.468 *** | −0.135 ** | 0.006 | 0.415 *** | 0.660 *** | −0.284 *** | 1.000 | |||
9. PEC# | 3.519 | 0.540 | 0.001 | −0.006 | 0.471 *** | −0.284 *** | −0.044 | 0.584 *** | 0.042 | 0.289 *** | 1.000 | ||
10. PPOP# | 5.441 | 1.278 | 0.818 *** | 0.805 *** | −0.147 *** | 0.100 * | 0.397 *** | 0.450 *** | −0.159 *** | 0.668 *** | −0.127 ** | 1.000 | |
11. FDI | 0.387 | 0.520 | 0.200 *** | 0.195 *** | −0.141 *** | −0.024 | 0.244 *** | 0.279 *** | −0.340 *** | 0.413 *** | 0.033 | 0.406 *** | 1.000 |
DV: PSO2 | Model (1) | Model (2) | Model (3) | Model (4) | Model (5) |
---|---|---|---|---|---|
PGDP | 0.061 (0.369) | 0.088 (0.315) | 0.049 (0.300) | 0.014 (0.277) | 0.015 (0.262) |
IND | −0.338 (0.300) | −0.368 (0.269) | −0.293 (0.266) | −0.332 (0.218) | −0.289 (0.219) |
TEC | −0.043 ** (0.018) | −0.044 ** (0.017) | −0.041 ** (0.017) | −0.034 ** (0.015) | −0.031 ** (0.014) |
PEC | 0.772 *** (0.127) | 0.790 *** (0.129) | 0.781 *** (0.125) | 0.838 *** (0.144) | 0.834 *** (0.141) |
PPOP | −0.034 (0.539) | −0.235 (0.422) | −0.079 (0.465) | −0.080 (0.407) | 0.108 (0.444) |
FDI | −0.051 *** (0.015) | −0.048 *** (0.013) | −0.046*** (0.013) | −0.041 *** (0.013) | −0.039 *** (0.013) |
PSPE | −0.257 *** (0.088) | −0.247 ** (0.097) | −0.217 ** (0.089) | −0.200 ** (0.096) | |
PPTC | −0.007 (0.007) | −0.012 (0.008) | |||
PSPE*PPTC | −0.036 (0.029) | −0.037 (0.025) | |||
SEE | −0.013 * (0.007) | −0.014 * (0.007) | |||
PSPE*SEE | −0.044 ** (0.02) | −0.046 ** (0.020) | |||
W*PGDP | −0.884 (0.572) | −0.647 (0.58) | −0.550 (0.799) | −0.899 (0.559) | −0.767 (0.800) |
W*IND | 0.494 (0.566) | 0.671 (0.529) | 0.831 (0.726) | 0.804 * (0.444) | 0.698 (0.655) |
W*TEC | −0.204 *** (0.056) | −0.197 *** (0.063) | −0.196 *** (0.08) | −0.155 ** (0.064) | −0.130 (0.091) |
W*PEC | −0.029 (0.580) | −0.124 (0.553) | −0.381 (0.999) | 0.172 (0.515) | 0.125 (0.962) |
W*PPOP | 2.808 (2.394) | 2.620 (2.212) | 2.149 (2.265) | 1.628 (2.113) | 0.786 (2.355) |
W*FDI | 0.598 *** (0.148) | 0.626 *** (0.15) | 0.532 *** (0.154) | 0.732 *** (0.135) | 0.678 *** (0.170) |
W*PSPE | 0.091 (0.172) | 0.209 (0.340) | 0.221 (0.191) | 0.162 (0.275) | |
W*PPTC | −0.006 (0.023) | 0.013 (0.023) | |||
W*PSPE*PPTC | 0.015 (0.088) | 0.048 (0.085) | |||
W*SEE | −0.001 (0.025) | 0.002 (0.027) | |||
W*PSPE * SEE | −0.135 * (0.078) | −0.132 (0.092) | |||
W*PSO2 | −0.045 (0.309) | −0.056 (0.297) | −0.055 (0.275) | −0.139 (0.304) | −0.063 (0.279) |
LM-LAG | 3.610 ** | 4.672 *** | 4.657 ** | 3.661 * | 2.988 * |
Robust LM-LAG | 16.852 *** | 18.968 *** | 16.605 *** | 19.271 *** | 16.658 *** |
LM-ERR | 328.001 *** | 389.331 *** | 356.630 *** | 374.515 *** | 321.366 *** |
Robust LM-ERR | 341.243 *** | 403.627 *** | 368.578 *** | 390.125 *** | 335.036 *** |
LR test spatial effect | 668.250 *** | 674.030 *** | 709.260 *** | 690.380 *** | 707.940 *** |
Spatial Hausman tests | 19.350 *** | 149.260 *** | 147.790 *** | 14.120 ** | 20.090 ** |
R2 | 0.600 | 0.618 | 0.633 | 0.648 | 0.663 |
DV: PSD | Model (6) | Model (7) | Model (8) | Model (9) | Model (10) |
---|---|---|---|---|---|
PGDP | −0.787 ** (0.316) | −0.493 ** (0.245) | −0.595 ** (0.234) | −0.486 ** (0.251) | −0.595 ** (0.239) |
IND | −1.056 *** (0.307) | −1.227 *** (0.293) | −1.135 *** (0.294) | −1.233 *** (0.295) | −1.137 *** (0.295) |
TEC | −0.020 (0.027) | −0.019 (0.023) | −0.017 (0.022) | −0.022 (0.024) | −0.019 (0.023) |
PEC | 0.747 *** (0.151) | 0.807 *** (0.163) | 0.799 *** (0.148) | 0.796 *** (0.163) | 0.796 *** (0.149) |
PPOP | 0.477 (0.888) | 0.333 (0.603) | 0.324 (0.684) | 0.290 (0.609) | 0.303 (0.681) |
FDI | 0.001 (0.022) | 0.006 (0.017) | 0.011 (0.016) | 0.009 (0.018) | 0.014 (0.017) |
PSPE | −0.393 *** (0.132) | −0.345 *** (0.131) | −0.391 *** (0.143) | −0.341 ** (0.14) | |
PPTC | −0.039 *** (0.015) | −0.038 ** (0.015) | |||
PSPE*PPTC | −0.061 * (0.033) | −00.061 * (0.033) | |||
SEE | 0.008 (0.01) | 0.005 (0.011) | |||
PSPE*SEE | −0.002 (0.026) | −0.006 (0.023) | |||
Spatial effects W | 0.734 *** (0.086) | 0.727 *** (0.066) | 0.720 *** (0.070) | 0.725 *** (0.066) | 0.719 *** (0.071) |
LM-LAG | 78.765 *** | 68.331 *** | 67.412 *** | 59.220 *** | 55.780 *** |
Robust LM-LAG | 0.216 | 0.868 | 0.779 | 1.569 | 1.844 |
LM-ERR | 389.975 *** | 314.106 *** | 317.177 *** | 256.673 *** | 236.446 *** |
Robust LM-ERR | 311.426 *** | 246.642 *** | 250.545 *** | 199.022 *** | 182.51 *** |
LR test spatial effect | 475.05 *** | 469.51 *** | 492.53 *** | 463.04 *** | 479.58 *** |
Spatial Hausman tests | 68.680 *** | 18.680 *** | 498.730 *** | 16.560 ** | 110.670 *** |
R2 | 0.321 | 0.349 | 0.386 | 0.353 | 0.389 |
DV: PSO2 | Direct Impact | Indirect Impact | Total Impact |
---|---|---|---|
PGDP | 0.032 (0.270) | −0.648 (0.758) | −0.616 (0.714) |
IND | −0.286 (0.231) | 0.754 (0.695) | 0.468 (0.696) |
TEC | −0.030 * (0.015) | −0.128 (0.094) | −0.158 * (0.093) |
PEC | 0.848 *** (0.143) | −0.063 (0.970) | 0.786 (0.935) |
PPOP | 0.120 (0.448) | 0.885 (2.511) | 1.005 (2.261) |
FDI | −0.040 *** (0.013) | 0.675 ** (0.285) | 0.635 ** (0.292) |
PSPE | −0.198 ** (0.099) | 0.160 (0.299) | −0.038 (0.31) |
PPTC | −0.013 (0.008) | 0.012 (0.024) | 0.000 (0.026) |
PSPE*PPTC | −0.035 (0.025) | 0.049 (0.089) | 0.013 (0.079) |
SEE | −0.014 * (0.007) | 0.004 (0.027) | −0.011 (0.028) |
PSPE*SEE | −0.047 ** (0.019) | −0.130 (0.12) | −0.177 (0.123) |
DV: PSO2 | Model (A1) | Model (A2) | Model (A3) | Model (A4) | Model (A5) |
---|---|---|---|---|---|
PGDP | −0.144 (0.341) | −0.127 (0.312) | −0.152 (0.288) | −0.171 (0.278) | −0.201 (0.261) |
IND | −0.349 (0.284) | −0.379 (0.257) | −0.231 (0.230) | −0.329 (0.228) | −0.183 (0.185) |
TEC | −0.043 ** (0.018) | −0.041 ** (0.017) | −0.040 ** (0.018) | −0.032 * (0.018) | −0.032 * (0.018) |
PEC | 0.695 *** (0.191) | 0.741 *** (0.196) | 0.701 *** (0.192) | 0.803 *** (0.201) | 0.766 *** (0.194) |
PPOP | 0.210 (0.819) | −0.014 (0.810) | 0.450 (0.852) | 0.141 (0.730) | 0.624 (0.758) |
FDI | −0.071 *** (0.022) | −0.067 *** (0.021) | −0.075 *** (0.021) | −0.061 *** (0.023) | −0.069 *** (0.022) |
PSPE | −0.255 *** (0.092) | −0.214 ** (0.100) | −0.198 ** (0.098) | −0.158 * (0.098) | |
PPTC | −0.005 (0.009) | −0.008 (0.010) | |||
PSPE*PPTC | −0.048 (0.033) | −0.049 (0.031) | |||
SEE | −0.013 * (0.007) | −0.013 * (0.007) | |||
PSPE*SEE | −0.042 * (0.023) | −0.039 ** (0.019) | |||
LW*PGDP | −0.533 (0.400) | −0.302 (0.399) | −0.181 (0.426) | −0.460 (0.392) | −0.326 (0.417) |
LW*IND | 0.383 (0.614) | 0.507 (0.586) | 0.492 (0.604) | 0.497 (0.505) | 0.480 (0.516) |
LW*TEC | −0.029 (0.045) | −0.03 (0.048) | −0.020 (0.040) | −0.024 (0.044) | −0.014 (0.039) |
LW*PEC | −0.028 (0.386) | −0.087 (0.397) | −0.167 (0.419) | 0.028 (0.375) | −0.056 (0.392) |
LW*PPOP | −0.783 (1.466) | −0.423 (1.444) | −1.022 (1.440) | −0.573 (1.296) | −1.252 (1.278) |
LW*FDI | 0.188 ** (0.078) | 0.196 *** (0.074) | 0.229 *** (0.074) | 0.213 *** (0.075) | 0.250 *** (0.067) |
LW*PSPE | −0.008 (0.189) | −0.036 (0.199) | 0.006 (0.205) | −0.017 (0.197) | |
LW*PPTC | −0.007 (0.009) | −0.003 (0.010) | |||
LW*PSPE*PPTC | 0.047 (0.050) | 0.057 (0.042) | |||
LW*SEE | −0.001 (0.013) | −0.003 (0.014) | |||
LW*PSPE*SEE | −0.041 (0.039) | −0.054 * (0.029) | |||
LW*PSO2 | 0.128 (0.163) | 0.099 (0.155) | 0.164 (0.167) | 0.064 (0.150) | 0.137 (0.156) |
Spatial Hausman tests | 44.960 *** | 30.330 *** | 15.830 ** | 1099.780 *** | 19.950 ** |
R2 | 0.548 | 0.570 | 0.599 | 0.600 | 0.631 |
DV: PSD | Model (A6) | Model (A7) | Model (A8) | Model (A9) | Model (A10) |
---|---|---|---|---|---|
PGDP | −0.798 *** (0.186) | −0.492 ** (0.199) | −0.596 *** (0.189) | −0.469 ** (0.207) | −0.574 *** (0.196) |
IND | −1.074 *** (0.314) | −1.253 *** (0.292) | −1.120 *** (0.302) | −1.273 *** (0.292) | −1.134 *** (0.303) |
TEC | −0.020 (0.026) | −0.014 (0.023) | −0.016 (0.022) | −0.018 (0.023) | −0.020 (0.023) |
PEC | 0.658 *** (0.157) | 0.742 *** (0.174) | 0.697 *** (0.154) | 0.724 *** (0.172) | 0.683 *** (0.154) |
PPOP | 0.262 (0.804) | 0.073 (0.565) | 0.234 (0.664) | 0.015 (0.571) | 0.197 (0.665) |
FDI | 0.007 (0.014) | 0.014 (0.012) | 0.019 * (0.011) | 0.016 (0.012) | 0.021 * (0.012) |
PSPE | −0.388 *** (0.14) | −0.325 ** (0.142) | −0.396 *** (0.151) | −0.333 ** (0.152) | |
PPTC | −0.035 ** (0.014) | −0.034 ** (0.014) | |||
PSPE*PPTC | −0.069 ** (0.031) | −0.068 ** (0.031) | |||
SEE | 0.011 (0.011) | 0.009 (0.011) | |||
PSPE*SEE | 0.011 (0.028) | 0.009 (0.024) | |||
Spatial effects LW | 0.476 *** (0.085) | 0.482 *** (0.077) | 0.473 *** (0.079) | 0.482 *** (0.079) | 0.475 *** (0.083) |
Spatial Hausman tests | 13.890 ** | 17.520 ** | 44.790 *** | 157.110 *** | 41.310 *** |
R2 | 0.344 | 0.360 | 0.403 | 0.361 | 0.403 |
DV: PSO2 | Model (B1) | Model (B2) | Model (B3) | Model (B4) | Model (B5) |
---|---|---|---|---|---|
PGDP_1 | −0.003 (0.353) | 0.010 (0.323) | 0.075 (0.322) | −0.040 (0.295) | 0.039 (0.302) |
IND_1 | −0.360 (0.276) | −0.384 (0.253) | −0.414 (0.255) | −0.361 (0.225) | −0.405 * (0.213) |
TEC_1 | −0.062 *** (0.017) | −0.063 *** (0.016) | −0.065 *** (0.014) | −0.057 *** (0.015) | −0.059 *** (0.012) |
PEC_1 | 0.673 *** (0.116) | 0.686 *** (0.118) | 0.684 *** (0.116) | 0.719 *** (0.131) | 0.718 *** (0.131) |
PPOP_1 | −0.249 (0.524) | −0.413 (0.460) | −0.273 (0.477) | −0.320 (0.459) | −0.141 (0.465) |
FDI_1 | −0.066 *** (0.014) | −0.064 *** (0.012) | −0.056 *** (0.014) | −0.059 *** (0.011) | −0.045 *** (0.013) |
PSPE_1 | −0.196 ** (0.085) | −0.195 ** (0.089) | −0.164 * (0.088) | −0.159 * (0.092) | |
PPTC_1 | −0.002 (0.005) | −0.005 (0.005) | |||
PSPE_1*PPTC_1 | −0.011 (0.022) | −0.011 (0.018) | |||
SEE_1 | −0.005 * (0.009) | −0.006 * (0.009) | |||
PSPE_1*SEE_1 | −0.037 * (0.023) | −0.041 ** (0.021) | |||
W*PGDP_1 | −0.254 (0.438) | −0.111 (0.497) | −0.046 (0.594) | −0.210 (0.485) | −0.099 (0.634) |
W*IND_1 | 0.992 ** (0.491) | 1.118 ** (0.476) | 0.477 (0.615) | 1.199 *** (0.401) | 0.369 (0.562) |
W*TEC_1 | −0.200 *** (0.064) | −0.201 *** (0.071) | −0.191 *** (0.073) | −0.163 ** (0.079) | −0.131 * (0.074) |
W*PEC_1 | −0.589 (0.393) | −0.661 (0.41) | −0.213 (0.856) | −0.511 (0.422) | 0.119 (0.819) |
W*PPOP_1 | 3.710 (2.437) | 3.621 (2.215) | 2.770 (2.395) | 2.917(2.212) | 1.346 (2.572) |
W*FDI_1 | 0.650 *** (0.187) | 0.667 *** (0.194) | 0.698 *** (0.179) | 0.726 *** (0.192) | 0.862 *** (0.189) |
W*PSPE_1 | 0.113 (0.252) | −0.293 (0.399) | 0.181 (0.244) | −0.305 (0.315) | |
W*PPTC_1 | 0.026 (0.021) | 0.042 ** (0.019) | |||
W*PSPE_1*PPTC_1 | 0.113 (0.075) | 0.168 * (0.097) | |||
W*SEE_1 | −0.009 (0.028) | 0.018 (0.041) | |||
W*PSPE_1*SEE_1 | −0.078 (0.086) | −0.133 (0.096) | |||
W*PSO2 | 0.227 (0.192) | 0.220 (0.191) | 0.108 (0.211) | 0.242 (0.195) | 0.129 (0.198) |
Spatial Hausman tests | 21.270 *** | 25.440 *** | 19.790 ** | 80.970 *** | 131.880 *** |
R2 | 0.595 | 0.606 | 0.621 | 0.620 | 0.646 |
DV: PSD | Model (B6) | Model (B7) | Model (B8) | Model (B9) | Model (B10) |
---|---|---|---|---|---|
PGDP_1 | −0.403 (0.267) | −0.115 (0.216) | −0.195 (0.207) | −0.131 (0.231) | −0.220 (0.223) |
IND_1 | −0.872 *** (0.313) | −1.044 *** (0.315) | −1.004 *** (0.299) | −1.047 *** (0.311) | −1.003 *** (0.299) |
TEC_1 | −0.004 (0.025) | −0.003 (0.024) | −0.002 (0.023) | −0.006 (0.024) | −0.005 (0.023) |
PEC_1 | 0.438 *** (0.131) | 0.497 *** (0.14) | 0.499 *** (0.131) | 0.500 *** (0.147) | 0.509 *** (0.138) |
PPOP_1 | 0.298 (0.884) | 0.160 (0.647) | 0.060 (0.76) | 0.116 (0.656) | 0.029 (0.747) |
FDI_1 | −0.033 (0.022) | −0.028 (0.017) | −0.024 (0.016) | −0.021 (0.015) | −0.018 (0.015) |
PSPE_1 | −0.383 *** (0.141) | −0.347 ** (0.138) | −0.363 ** (0.148) | −0.323 ** (0.144) | |
PPTC_1 | −0.033 ** (0.016) | −0.033 ** (0.015) | |||
PSPE_1*PPTC_1 | −0.035 * (0.034) | −0.034 * (0.032) | |||
SEE_1 | 0.010 (0.012) | 0.007 (0.012) | |||
PSPE_1*SEE_1 | −0.028 (0.031) | −0.032 (0.029) | |||
Spatial effects W | 0.731 *** (0.066) | 0.710 *** (0.067) | 0.693 *** (0.07) | 0.703 *** (0.07) | 0.688 *** (0.072) |
Spatial Hausman tests | 10.900 ** | 12.140 ** | 16.660 ** | 16.060 ** | 27.530 *** |
R2 | 0.158 | 0.228 | 0.268 | 0.244 | 0.281 |
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Zhang, Z.; Zhang, G.; Song, S.; Su, B. Spatial Heterogeneity Influences of Environmental Control and Informal Regulation on Air Pollutant Emissions in China. Int. J. Environ. Res. Public Health 2020, 17, 4857. https://doi.org/10.3390/ijerph17134857
Zhang Z, Zhang G, Song S, Su B. Spatial Heterogeneity Influences of Environmental Control and Informal Regulation on Air Pollutant Emissions in China. International Journal of Environmental Research and Public Health. 2020; 17(13):4857. https://doi.org/10.3390/ijerph17134857
Chicago/Turabian StyleZhang, Zhenhua, Guoxing Zhang, Shunfeng Song, and Bin Su. 2020. "Spatial Heterogeneity Influences of Environmental Control and Informal Regulation on Air Pollutant Emissions in China" International Journal of Environmental Research and Public Health 17, no. 13: 4857. https://doi.org/10.3390/ijerph17134857
APA StyleZhang, Z., Zhang, G., Song, S., & Su, B. (2020). Spatial Heterogeneity Influences of Environmental Control and Informal Regulation on Air Pollutant Emissions in China. International Journal of Environmental Research and Public Health, 17(13), 4857. https://doi.org/10.3390/ijerph17134857