| Literature DB >> 31100968 |
Yingying Zhou1, Yaru Xu2, Chuanzhe Liu3, Zhuoqing Fang4, Jiayi Guo5.
Abstract
The spatial autocorrelation analysis method was applied to panel data from the provinces of China (including autonomous regions and municipalities directly under the central government) for the period 2003 to 2016 in order to construct a spatial Durbin model of technological progress and financial support in relation to reductions in carbon emissions. The results show that China's carbon intensity presents significant spatial spillover effects under different spatial weights, which indicates that the carbon intensity of a province is influenced not only by its own characteristics, but also by the carbon emission behaviors of geographically adjacent and economically similar provinces and regions. Financial structure, financial scale, and financial efficiency all have significant effects on carbon intensity within a province, while financial structure is also linked to carbon intensity in other regions, but financial scale has no significant spillover effect on carbon intensity in space. Areas with high financial efficiency can reduce their own carbon intensity as well as that of surrounding areas. The inter-regional spillover effect of technological progress on carbon intensity is stronger than the spillover effect, but there is a time lag.Entities:
Keywords: carbon intensity; financial support; spatial autocorrelation; technical progress
Mesh:
Substances:
Year: 2019 PMID: 31100968 PMCID: PMC6571964 DOI: 10.3390/ijerph16101743
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Path analysis of financial development affecting carbon emission reduction.
Definition and measurement of variables.
| Variables | Definition and Measurement |
|---|---|
| Carbon intensity | Y = CO2/GDP, in tons/ten thousand yuan. |
| Scale variables that reflect financial support | FGM = Total financial assets/GDP = (Total financial resources used by financial institutions + Stock market value + Bond balance + Premium balance)/GDP |
| Structural variables that reflect financial support | FJG = Financial institution loan balance at the end of the year/Total financial assets = Financial institution loan balance at the end of the year/(Total financial resources used by financial institutions + Stock market value + Bond balance + Premium balance) |
| Efficiency variable that reflects financial support FXL | FXL = Total loans of financial institutions/Total financial institutions deposits |
| R&D expenditures internal expenditures | Measured by the internal expenditures of R&D expenditures in various regions; the unit is 100 million yuan. |
| Per capita patent applications | PAT = Patent authorization number/Year-end population; the unit for which is 10,000 people. |
| Adjacency weight matrix | |
| Geographic weight matrix | |
| Economic weight matrix |
Figure 2Global Moran’s I index of carbon intensity in China.
Estimation results of traditional hybrid panel data model.
| Variable | Spatial Fixed Effect | Timed Fixed Effect | Two-Way Fixed Effect |
|---|---|---|---|
| lnFJG | 0.584253 *** (4.106919) | 0.240464 *** (4.033609) | −0.015657 *** (9.649219) |
| lnFGM | 0.639430 *** (6.340458) | −0.030902 (0.928114) | −0.057254 *** (5.085647) |
| lnFXL | 0.029533 (0.238726) | −0.213918 *** (−4.530700) | 0.250308 *** (−4.509987) |
| lnRD | 0.160020 *** (−5.350509) | −0.058099 *** (−3.242875) | −0.145259 ** (−2.382171) |
| lnPAT | −0.056001 ** (−2.321551) | −0.272632 *** (−2.716159) | −0.212585 *** (−2.716159) |
| R2 | 0.1914 | 0.3983 | 0.8030 |
| Log-likelihood | 304.6192 | −248.4110 | 201.5277 |
| LMlag | 3.7554 * | 95.1616 *** | 18.3844 *** |
| Robust-LMlag | 1.8364 | 22.6243 *** | 5.9763 ** |
| LMerror | 2.6604 | 72.5769 *** | 14.3132 * |
| Robust-LMerror | 0.7414 | 0.0396 | 1.9051 |
Note: The t-statistics are in parentheses, * is significant at 10% confidence level, ** is significant at 5% confidence level, and *** is significant at 1% confidence level, the same below.
Spatial Durbin model estimation and test.
| Variables | Two-Way Fixed Effect | Random Effect | ||||
|---|---|---|---|---|---|---|
| Adjacency Matrix | Economic Matrix | Geographic Matrix | Adjacency Matrix | Economic Matrix | Geographic Matrix | |
| lnFJG | 0.425188 *** | 0.566384 *** | 0.603039 *** | 0.245802 *** | 0.682680 *** | 0.444862 *** |
| lnFGM | 0.419447 *** | 0.623021 *** | 0.613533 *** | 0.201089 ** | 0.730343 *** | 0.481504 *** |
| lnFXL | −0.013464 * | 0.024588 | −0.047724 ** | 0.057773 * | −0.050647 * | 0.194269 * |
| lnRD | −0.14500 *** | −0.172148 *** | −0.169546 *** | 0.057233 *** | 0.140653 *** | 0.128634 *** |
| lnPAT | −0.017683 ** | −0.044200 * | −0.035167 *** | −0.090255 ** | −0.121580 *** | −0.051648 * |
| W*lnFJG | 0.039356 * | 0.303015 * | 1.080740 *** | −0.016419 * | −0.551633 *** | 0.295951 |
| W*lnFGM | 0.148659 | −0.344371 * | 0.282024 | −0.055532 * | −0.617813 *** | −0.316510 ** |
| W*lnFXL | 0.134168 | −0.196592 ** | −1.245640 *** | −0.193713 ** | 0.097805 | −0.625544 *** |
| W*lnRD | −0.115651 ** | −0.081394 * | −0.187231 * | 0.020980 * | −0.045078 *** | 0.024865 |
| W*lnPAT | −0.042882 ** | −0.141555 ** | −0.130469 * | −0.134885 *** | −0.166242 *** | −0.217064 *** |
| W*lnY | 0.304158 *** | 0.586095 *** | 0.276900 *** | 0.602980 *** | 0.505000 *** | 0.566995 *** |
| teta | 0.072218 | 0.054061 | 0.057969 | |||
| Wald_spatial_lag | 21.5664 *** | 19.0941 *** | 16.9135 *** | 12.9903 *** | 13.8764 *** | 20.0609 *** |
| LR_spatial_lag | 23.1102 *** | 22.0631 *** | 24.3116 *** | |||
| Wald_spatial_error | 28.4327 *** | 21.8123 *** | 22.6681 *** | 16.2104 *** | 12.0887 *** | 16.6862 *** |
| LR_spatial_error | 26.8217 *** | 18.0258 *** | 20.766 | |||
Note: teta is a random effect; adding * indicates that the test results are significant at 10% confidence level, ** indicates that the test results are significant at 5% confidence level and *** indicates that the test results are significant at 1% confidence level.
Direct effect, indirect effect, and total effect of the spatial Durbin model.
| Variables | Effect | Adjacency Weight Matrix | Economic Weight Matrix | Geographic Weight Matrix |
|---|---|---|---|---|
| lnFJG | Direct Effect | −0.270553 ** | −0.567431 *** | −0.667972 *** |
| Indirect Effect | 0.314399 | −0.229892 | 1.720065 *** | |
| Total Effect | 0.043846 * | −0.797323 | 1.052093 *** | |
| lnFGM | Direct Effect | −0.212548 ** | −0.622376 *** | −0.638185 *** |
| Indirect Effect | 0.252683 | −0.269054 | 0.924663 | |
| Total Effect | 0.040135 * | −0.89143 | 0.286478 *** | |
| lnFXL | Direct Effect | −0.024885 * | −0.023065 * | 0.111247 |
| Indirect Effect | −0.369290 *** | −0.241266 ** | −1.739281 *** | |
| Total Effect | −0.394175 * | −0.264331 | −1.628034 *** | |
| lnRD | Direct Effect | 0.069459 ** | −0.168532 *** | 0.163037 *** |
| Indirect Effect | −0.130082 ** | −0.057522 | −0.186815 | |
| Total Effect | −0.060623 *** | −0.226054 | −0.023778 | |
| lnPAT | Direct Effect | −0.440598 *** | −0.157121 ** | −0.191621 * |
| Indirect Effect | −0.128854 *** | −0.040166 * | −0.042469 * | |
| Total Effect | −0.569452 *** | −0.197287 | −0.234090 ** |
Note: adding * indicates that the test results are significant at 10% confidence level, ** indicates that the test results are significant at 5% confidence level and *** indicates that the test results are significant at 1% confidence level.