Characteristics and Influencing Factors of Green Finance Development in the Yangtze River Delta of China: Analysis Based on the Spatial Durbin Model
Abstract
:1. Introduction
2. Method
2.1. Spatial Autocorrelation Analysis
2.1.1. Spatial Weight Matrix
2.1.2. Global Spatial Autocorrelation
2.2. Spatial Durbin Model
- (1)
- If , the model is a spatial Durbin model (SDM)
- (2)
- If , , the model is a spatial autoregression model (SAR)
- (3)
- If and , the model is a spatial error model (SEM)
2.3. Direct Effect and Indirect Effect
2.4. Variable Selection and Data Source
2.4.1. Variable Selection
- (1)
- Development Level of Green Finance (DGF)
- (2)
- Regional Innovation Level (INNO)
- (3)
- Optimization of Industrial Structure (OIS)
- (4)
- Others
2.4.2. Data Source
3. Results Analysis
3.1. Global Spatial Autocorrelation of Green Finance Development
3.2. Spatial Distribution Characteristics of Green Finance Development
3.3. Analysis of the Influencing Factors of Green Finance Development
3.3.1. Wald Test and the LR Test
3.3.2. Model Specification
3.3.3. Regression Results of the Spatial Durbin Model
3.3.4. Direct Effects and Indirect Effects
- (1)
- Direct effects: As shown in Table 5, the direct effects coefficients of GDP (Column 2, Line 1), INNO, and AQ are significant at the significance level of 1%. The coefficient of the direct effects of the GDP is significantly positive. The coefficients of the direct effects of the INNO and AQ are significantly negative. The direct effect coefficient of INNO is significant at a significance level of 1%, while the indirect effect is not significant. By comparing the absolute value of the direct effect coefficient and the indirect effect coefficient, it is found that the GDP, INNO, and AQ are associated with the development level of green finance mainly through the direct effect.
- (2)
- Indirect effects (spillover effect): The indirect effects coefficients of GDP (Column 2, Line 6), DFD, OIS, and INNO are significant at the significance level of 10%. The indirect effect coefficients of DFD and INNO are significantly positive, indicating that the DFD and INNO have positive spatial spillover effects and that the DFD and INNO in neighboring cities will be positively associated with a city’s green finance development. The indirect effect coefficient of OIS is significantly negative, indicating that the OIS has a negative spatial spillover effect. The OIS in neighboring cities will be negatively associated with the improvement of the city’s green finance development level. Likewise, this result shows that the DFD and OIS mainly are associated with green finance development through the spillover effect.
3.4. Robustness Test
4. Conclusions and Suggestions
4.1. Conclusions
- (1)
- The development of green finance in the Yangtze River Delta has a clear spatial cluster effect, and there are large regional differences. High levels of green finance development are generally distributed in urban agglomerations, including Shanghai, northern Zhejiang, and southern Jiangsu. The level of green finance development in Zhejiang Province is generally high, and the level of green finance development in Anhui Province is generally low.
- (2)
- The GDP, INNO, and AQ are the most important influencing factors, and the DFD and OIS are not significant.
- (3)
- The GDP is positively correlated with the development of green finance. The INNO and AQ are negatively correlated with the development of green finance.
- (4)
- The GDP, INNO, and AQ are associated with the development level of green finance mainly through direct effects. The DFD and OIS are associated with the development level of green finance mainly through spillover effects. Particularly, the DFD has a positive spillover effect, and in contrast, the OIS has a negative spillover effect. The direct effects of the DFD and OIS are not significant.
4.2. Suggestions
- (1)
- With the construction of the Shanghai International Financial Center as the starting point, the construction of a green financial core circle in the Yangtze River Delta should be promoted [12]. Forming a green financial capital service center and driving the development of green finance in surrounding urban agglomerations through these leading cities will gradually transform the spatial cluster effect of green finance into a spatial spillover effect, thereby providing capital services for the development of green finance in cities in the Yangtze River Delta.
- (2)
- The green finance development system should be improved, and the development of green finance should be accelerated. In the Yangtze River Delta region, green finance accounts for a small percentage of financial development in Anhui Province, northern Jiangsu, and southern Zhejiang. The green financial system is not perfect, and green finance began late. Therefore, regions with higher levels of green finance development, such as Shanghai, southern Jiangsu, and northern Zhejiang, need to play a role in the spatial spillover effect of financial development on green finance, continually integrate the development of green finance and the development of the Yangtze River Delta, and have a positive interaction to jointly promote green development.
- (3)
- The level of urban openness should be expanded, economic development should be accelerated, and the coordinated development of the economy and green finance should be promoted. The level of economic development is a major factor in the imbalance in green finance development, but the spatial spillover effect of the level of economic development in the Yangtze River Delta on green finance is insignificant. It is no longer sufficient to increase the level of openness and economic development of the 26 urban areas in the Yangtze River Delta. It is also necessary to improve the level of openness and economic development of the “40 + 1” urban agglomeration in the Yangtze River Delta to encourage the spatial spillover effects of economic development on green finance.
- (4)
- The economic structure should be adjusted, the development mode should be changed, and environmental protection industries, including environmental protection manufacturing and service industries, should be vigorously cultivated and developed. During the gradual development of green industry, the liquidity of green funds is enhanced, and then green economic effectiveness is improved. In the past, in the process of optimizing the industrial structure in the Yangtze River Delta, the proportion that the secondary industry transferred to the tertiary industry was considered, and the transferred secondary industry and the development of the tertiary industry were not considered much. In the process of optimizing the industrial structure, we must not only suppress investment in high-energy consumption and high-pollution industries but also vigorously develop industries such as environmental protection and clean energy and solve the problem of difficult financing for environmental protection enterprises. It is necessary not only to increase the proportion of the tertiary industry but also to vigorously develop tertiary industries such as finance, insurance, transportation, tourism, and education services related to environmental protection.
- (5)
- Research and investment in green technology should be increased, green development should be promoted with green technology, and green finance should be promoted through green development. A market-oriented green technology innovation system should be established. The proportion of green technology in technological innovation and the investment and financing of green technologies should be increased, striving to solve barriers, such as high technological costs, insufficient funds, and limited information on green enterprises. Finally, the conversion of green technologies into production technologies should be accelerated, and the development of green industries, such as energy-saving and environmental protection industries, clean production industries, and clean energy industries, should be expanded.
- (6)
- The government should provide financial incentives for green companies. The government gives cash rewards to green companies based on the quality and quantity of green technology innovation. The government provides price subsidies during the promotion of green technologies by enterprises. The government formulates corresponding tax reduction measures based on the emission reduction scale of green enterprises or the output of green products.
Author Contributions
Funding
Conflicts of Interest
References
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Aggregate Name | Variable Name | Variable Symbol |
---|---|---|
Dependent variable | Development level of green finance | DGF |
Regional GDP | GDP | |
Degree of financial development | DFD | |
Independent variable | Optimization of industrial structure | OIS |
Regional innovation level | INNO | |
Air quality | AQ |
Year | Moran’s I | E(I) | sd(I) | Z | p-Value * |
---|---|---|---|---|---|
2011 | 0.019 * | −0.025 | 0.026 | 1.696 | 0.090 |
2012 | 0.040 * | −0.025 | 0.034 | 1.918 | 0.055 |
2013 | 0.058 ** | −0.025 | 0.037 | 2.218 | 0.027 |
2014 | 0.073 ** | −0.025 | 0.040 | 2.426 | 0.015 |
2015 | 0.062 ** | −0.025 | 0.043 | 2.009 | 0.045 |
2016 | 0.030 | −0.025 | 0.035 | 1.560 | 0.119 |
2017 | 0.033 | −0.025 | 0.041 | 1.408 | 0.159 |
Wald Test | LR Test | ||
---|---|---|---|
Wald(lag) | 39.05 *** | LR(lag) | 37.18 *** |
Wald(error) | 37.8 *** | LR(error) | 52.56 *** |
Variable | Spatial Fixed Effects (Column 1) | Time Fixed Effects (Column 2) | Spatial and Time Fixed Effects (Column 3) |
---|---|---|---|
GDP | 0.0140 *** | 0.0158 *** | 0.0142 *** |
(0.002) | (0.003) | (0.002) | |
DFD | 1.156 | 0.674 | 1.446 |
(1.058) | (0.729) | (1.093) | |
OIS | 1.128 | −0.95 | 1.348 * |
(0.716) | (0.743) | (0.706) | |
INNO | 0.0378 ** | −0.0882 *** | 0.0395 ** |
(0.019) | (0.019) | (0.018) | |
AQ | −0.0071 | −0.0289 *** | −0.0079 |
(0.008) | (0.009) | (0.008) | |
W × GDP | −0.0026 | 0.0024 | 0.004 |
(0.005) | (0.004) | (0.009) | |
W × DFD | 0.671 | 4.456 ** | 4.779 ** |
(1.894) | (1.877) | (2.282) | |
W × OIS | −3.492 * | −7.031 *** | 0.37 |
(2.036) | (2.681) | (3.523) | |
W × INNO | −0.0873 *** | 0.0461 | −0.0615 |
(0.029) | (0.032) | (0.040) | |
W × AQ | −0.0121 | −0.0092 | −0.0216 |
(0.021) | (0.016) | (0.035) | |
−0.144 | −0.78 *** | −0.365 *** | |
R2 | 0.739 | 0.868 | 0.747 |
Variable | Spatial Fixed Effects (Column 1) | Time Fixed Effects (Column 2) | Spatial and Time Fixed Effects (Column 3) | |
---|---|---|---|---|
GDP | 0.0141 *** | 0.0165 *** | 0.0143 *** | |
(0.002) | (0.003) | (0.002) | ||
DFD | 1.084 | 0.402 | 1.272 | |
(1.067) | (0.846) | (1.124) | ||
Direct effects | OIS | 1.245 * | −0.497 | 1.419 ** |
(0.689) | (0.817) | (0.672) | ||
INNO | 0.0395 ** | −0.0956 *** | 0.0422 ** | |
(0.019) | (0.021) | (0.018) | ||
AQ | −0.0067 | −0.0299 *** | −0.0072 | |
(0.008) | (0.009) | (0.007) | ||
GDP | −0.0039 | −0.0063 ** | −0.0007 | |
(0.005) | (0.003) | (0.007) | ||
DFD | 0.494 | 2.486 * | 3.344 * | |
(1.699) | (1.483) | (1.956) | ||
Indirect effects | OIS | −3.269 * | −4.041 ** | −0.111 |
(1.669) | (1.644) | (2.62) | ||
INNO | −0.0813 ** | 0.0724 *** | −0.057 * | |
(0.025) | (0.021) | (0.031) | ||
AQ | −0.0087 | 0.0082 | −0.0126 | |
(0.018) | (0.011) | (0.026) | ||
GDP | 0.0102 *** | 0.0103 *** | 0.0136 ** | |
(0.004) | (0.002) | (0.006) | ||
DFD | 1.579 | 2.888 *** | 4.616 ** | |
(1.274) | (0.851) | (1.892) | ||
Total effects | OIS | −2.023 | −4.538 *** | −2.773 |
(1.643) | (1.33) | (2.384) | ||
INNO | −0.0419 ** | −0.0232 | −0.0148 | |
(0.019) | (0.023) | (0.031) | ||
AQ | −0.0154 | −0.0217 | −0.0198 | |
(0.02) | (0.01) | (0.029) |
Variable | Spatial Fixed-Effects (Column 1) | Time Fixed-Effects (Column 2) | Spatial and Time-Effects (Column 3) | |
---|---|---|---|---|
GDP | 0.0140 *** | 0.0160 *** | 0.0143 *** | |
(0.002) | (0.003) | (0.002) | ||
DFD | 0.862 | 0.638 | 1.424 | |
(1.045) | (0.719) | (1.101) | ||
OIS | 0.38 | −1.389 | 1.296 * | |
(0.733) | (0.805) | (0.729) | ||
INNO | 0.0350 ** | −0.0924 *** | 0.0380 ** | |
(0.018) | (0.019) | (0.019) | ||
AQ | −0.0068 | −0.0276 *** | −0.0276 *** | |
(0.01) | (0.01) | (0.007) | ||
GDP | 0.0141 *** | 0.0164 *** | 0.0145 *** | |
(0.002) | (0.003) | (0.002) | ||
DFD | 0.811 | 0.519 | 1.304 | |
(1.022) | (0.779) | (1.119) | ||
Direct effects | OIS | 0.401 | −1.112 | 1.331 * |
(0.718) | (0.798) | (0.698) | ||
INNO | 0.0344 ** | −0.0970 *** | 0.0391 ** | |
(0.017) | (0.021) | (0.018) | ||
AQ | −0.00658 | −0.0284 *** | −0.00729 | |
(0.01) | (0.01) | (0.007) | ||
GDP | −0.00279 | −0.00372 ** | −0.00291 | |
(0.004) | (0.002) | (0.003) | ||
DFD | 0.289 | 1.162 | 2.093 | |
(1.187) | (0.961) | (1.356) | ||
Indirect effects | OIS | −2.625 | −2.836 ** | 0.899 |
(1.721) | (1.278) | (1.48) | ||
INNO | −0.0518 *** | 0.0509 ** | −0.0253 | |
(0.018) | (0.021) | (0.022) | ||
AQ | −0.0055 | 0.0076 | −0.0153 | |
(0.014) | (0.009) | (0.013) | ||
GDP | 0.0113 *** | 0.0126 *** | 0.0116 *** | |
(0.003) | (0.002) | (0.003) | ||
DFD | 1.1 | 1.681 *** | 3.397 *** | |
(1.101) | (0.542) | (1.123) | ||
Total effects | OIS | −2.224 | −3.949 *** | 2.23 |
(2.052) | (1.063) | (1.836) | ||
INNO | −0.0175 | −0.0461 ** | 0.0138 | |
(0.022) | (0.023) | (0.031) | ||
AQ | −0.0121 | −0.0207 * | −0.0226 | |
(0.019) | (0.011) | (0.016) | ||
0.0828 | −0.278 *** | −0.124 ** | ||
R2 | 0.714 | 0.87 | 0.727 |
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Xie, H.; Ouyang, Z.; Choi, Y. Characteristics and Influencing Factors of Green Finance Development in the Yangtze River Delta of China: Analysis Based on the Spatial Durbin Model. Sustainability 2020, 12, 9753. https://doi.org/10.3390/su12229753
Xie H, Ouyang Z, Choi Y. Characteristics and Influencing Factors of Green Finance Development in the Yangtze River Delta of China: Analysis Based on the Spatial Durbin Model. Sustainability. 2020; 12(22):9753. https://doi.org/10.3390/su12229753
Chicago/Turabian StyleXie, Hualin, Zhenyi Ouyang, and Yongrok Choi. 2020. "Characteristics and Influencing Factors of Green Finance Development in the Yangtze River Delta of China: Analysis Based on the Spatial Durbin Model" Sustainability 12, no. 22: 9753. https://doi.org/10.3390/su12229753
APA StyleXie, H., Ouyang, Z., & Choi, Y. (2020). Characteristics and Influencing Factors of Green Finance Development in the Yangtze River Delta of China: Analysis Based on the Spatial Durbin Model. Sustainability, 12(22), 9753. https://doi.org/10.3390/su12229753