Balancing Population Distribution and Sustainable Economic Development in Yangtze River Economic Belt of China
Abstract
:1. Introduction
2. Consistency of Population and Economy (CPE) and Regional Economic Disparity
3. Data and Methods
3.1. Research Data
3.2. CPE Values Index
3.3. Determinants of CPE
3.4. Research Method
- y denotes CPE, is a unit vector of N × 1 order, which is related to the estimated constant term ;
- W is an n-order spatial weight matrix, which reflects the dependence between regions (In the spatial econometric analysis, a spatial weight matrix is needed to express the spatial relationships among analyzed regions. Because the principle of spatial weight matrix is based on the concept of proximity, the weights are simple to construct. In the actual spatial econometric analysis, the spatial weight matrix as determined by this method has been widely used. Therefore, this paper sets the spatial weight matrix to a matrix of binary adjacency weights. That is, if the two regions are geographically bordered, the weight is set to 1, otherwise it is set to 0.)
- is the spatial lag dependent variable, that is the endogenous interaction effect between n regions;
- is a parameter reflecting the magnitude of this effect; similarly;
- is the exogenous interaction effect of each independent variable;
- is the parameter reflecting the magnitude of this effect;
- is the regression coefficient, and the explanatory variable represents the determinants of CPE;
- is a random disturbance term;
- is a spatial individual effect, reflecting individual regions do not change with time;
- is a spatial time effect, reflecting all individual regions change with time.
4. Model Results and Analysis
4.1. Tests of Spatial Dependency
4.2. Model Selection
4.3. Results of Regression Analysis
4.4. Spillover Effect Analysis
5. Conclusions
- (1)
- The economic development is too spatially agglomerated in and around provincial capital cities in YREB. The population is over-agglomerated in other cities of all provinces in YREB. The results suggest the need to further strengthen the flows of population or to strengthen the economic development of small towns such as counties and towns.
- (2)
- From the perspective of the total effect, different factors have shown to have different effects on the degrees of population–economic coordination in YREB. Infrastructure changes have no significant impact on CPE values. Human capital has a negative impact on CPE values. Physical capital and per capita GDP have a positive impact on CPE values.
- (3)
- The increase in human capital has a negative impact on CPE values, but the spillover effect from core areas to adjacent areas is positive, indicating that the increase of human capital has a greater impact on core regions than on their adjacent areas. The industrial structure has the opposite direction of influence on CPE values between the region and the adjacent region. It should be noted that it is still difficult to judge which region has more effect on the imbalance of the population–economic coordination as a whole.
- (4)
- The spillover effect of per capita GDP increase is significantly negative, and the spillover effect of the human capital increase and industrial structure optimization are significantly positive. In addition, the spatial spillover effects of regional policies, physical capital, and infrastructure on CPE values are not significant.
Author Contributions
Funding
Conflicts of Interest
References
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Year | CPE | INVEST | SECEDU | TRANSP | POLICY | INDSTRU | PCGDP |
---|---|---|---|---|---|---|---|
2001 | 0.533 *** | 0.196 *** | 0.492 *** | 0.215 *** | 0.426 *** | 0.218 *** | 0.544 *** |
2002 | 0.545 *** | 0.295 *** | 0.625 *** | 0.171 ** | 0.415 *** | 0.204 *** | 0.549 *** |
2003 | 0.558 *** | 0.296 *** | 0.678 *** | 0.157 ** | 0.435 *** | 0.211 *** | 0.556 *** |
2004 | 0.564 *** | 0.305 *** | 0.600 *** | 0.162 ** | 0.445 *** | 0.170 ** | 0.555 *** |
2005 | 0.531 *** | 0.235 *** | 0.605 *** | 0.151 ** | 0.395 *** | 0.204 *** | 0.524 *** |
2006 | 0.504 *** | 0.236 *** | 0.550 *** | 0.097 * | 0.421 *** | 0.123 * | 0.483 *** |
2007 | 0.531 *** | 0.269 *** | 0.482 *** | 0.105 * | 0.443 *** | 0.102 * | 0.511 *** |
2008 | 0.514 *** | 0.213 *** | 0.416 *** | 0.102 * | 0.423 *** | 0.137 ** | 0.493 *** |
2009 | 0.502 *** | 0.367 *** | 0.289 *** | 0.126 * | 0.417 *** | 0.190 *** | 0.488 *** |
2010 | 0.497 *** | 0.361 *** | 0.387 *** | 0.159 ** | 0.273 *** | 0.236 *** | 0.487 *** |
2011 | 0.485 *** | 0.337 *** | 0.475 *** | 0.145 ** | 0.386 *** | 0.278 *** | 0.478 *** |
2012 | 0.440 *** | 0.339 *** | 0.503 *** | 0.142 ** | 0.331 *** | 0.299 *** | 0.442 *** |
2013 | 0.147 *** | 0.154 ** | 0.182 *** | 0.126 * | 0.207 *** | 0.317 *** | 0.347 *** |
Statistic of Test | Pooled OLS | Spatial Fixed Effects | Time-Period Fixed Effects | Spatial and Time-Period Fixed Effects |
---|---|---|---|---|
LMlag | 182.340 | 0.154 | 43.002 | 0.866 |
(0.000) | (0.695) | (0.000) | (0.352) | |
R_LMlag | 0.763 | 76.457 | 11.902 | 8.809 |
(0.382) | (0.000) | (0.001) | (0.003) | |
LMerr | 438.454 | 15.466 | 50.791 | 0.714 |
(0.000) | (0.000) | (0.000) | (0.398) | |
R_LMerr | 256.877 | 91.769 | 19.691 | 8.657 |
(0.000) | (0.000) | (0.000) | (0.003) |
Determinants | Regression Coefficients | Determinants | Regression Coefficients |
---|---|---|---|
pcgdp | 1.633 *** | W*pcgdp | −0.373 *** |
(33.713) | (−3.337) | ||
indstru | −0.146 *** | W*indstru | 0.124 ** |
(−4.407) | (2.477) | ||
transp | −0.01 | W*transp | 0.001 |
(−0.332) | (0.033) | ||
secedu | −0.283 *** | W*secedu | 0.189 *** |
(−7.860) | (3.296) | ||
policy | −0.100 *** | W*policy | 0.04 |
(−4.274) | (0.924) | ||
invest | 0.166 *** | W*invest | −0.086 |
(5.558) | (−1.396) | ||
W*dep.var | 0.033 | ||
(0.897) | |||
R2 | 0.936 | ||
sigma2 | 0.05 | ||
log-L | 200.463 |
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Xiang, H.; Yang, J.; Liu, X.; Lee, J. Balancing Population Distribution and Sustainable Economic Development in Yangtze River Economic Belt of China. Sustainability 2019, 11, 3320. https://doi.org/10.3390/su11123320
Xiang H, Yang J, Liu X, Lee J. Balancing Population Distribution and Sustainable Economic Development in Yangtze River Economic Belt of China. Sustainability. 2019; 11(12):3320. https://doi.org/10.3390/su11123320
Chicago/Turabian StyleXiang, Huali, Jun Yang, Xi Liu, and Jay Lee. 2019. "Balancing Population Distribution and Sustainable Economic Development in Yangtze River Economic Belt of China" Sustainability 11, no. 12: 3320. https://doi.org/10.3390/su11123320
APA StyleXiang, H., Yang, J., Liu, X., & Lee, J. (2019). Balancing Population Distribution and Sustainable Economic Development in Yangtze River Economic Belt of China. Sustainability, 11(12), 3320. https://doi.org/10.3390/su11123320