| Literature DB >> 29257068 |
Wenbin Cao1, Hui Wang2, Huihui Ying3.
Abstract
While environmental pollution is becoming more and more serious, many countries are adopting policies to control pollution. At the same time, the environmental regulation will inevitably affect economic and social development, especially employment growth. The environmental regulation will not only affect the scale of employment directly, but it will also have indirect effects by stimulating upgrades in the industrial structure and in technological innovation. This paper examines the impact of environmental regulation on employment, using a mediating model based on the data from five typical resource-based provinces in China from 2000 to 2015. The estimation is performed based on the system GMM (Generalized Method of Moments) estimator. The results show that the implementation of environmental regulation in resource-based areas has both a direct effect and a mediating effect on employment. These findings provide policy implications for these resource-based areas to promote the coordinating development between the environment and employment.Entities:
Keywords: employment effect; environmental regulation; mediating effect; system GMM
Mesh:
Year: 2017 PMID: 29257068 PMCID: PMC5751015 DOI: 10.3390/ijerph14121598
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1The degree of structure deviation.
The results of the stationary test.
| Varible | LLC Test | ADF-Fisher Test | PP-Fisher Test | Results |
|---|---|---|---|---|
| −14.452 | 117.363 | 145.667 | Stationary | |
| −9.624 | 93.469 | 134.234 | Stationary | |
| −11.236 | 112.344 | 157.342 | Stationary | |
| −13.244 | 115.379 | 146.383 | Stationary | |
| −12.981 | 103.451 | 136.924 | Stationary | |
| −9.343 | 87.364 | 127.474 | Stationary | |
| −7.435 | 78.451 | 131.712 | Stationary |
Note: * significant at 0.1 level; *** significant at 0.01 level.
The results of the cointegration test.
| Statistics | Test Results | |||
|---|---|---|---|---|
| Test Methods | ||||
| 9.353 | 2.319 | 3.271 | ||
| −0.392 | 0.549 | 1.934 | ||
| −8.258 | −5.391 | −0.817 | ||
| −9.387 | −2.345 | −2.374 | ||
| 1.832 | 3.275 | 3.571 | ||
| −11.639 | −6.438 | −6.658 | ||
| −10.375 | −3.234 | −7.473 | ||
Note: ** significant at 0.05 level; *** significant at 0.01 level.
Estimation results of the econometric regression model.
| Type | Variables | Equation (5) | Equation (6) | Equation (7) | Equation (8) | Equation (9) |
|---|---|---|---|---|---|---|
| 0.028 | 0.041 | 0.047 | −0.036 | 0.021 | ||
| 0.453 | 0.043 | 1.329 | 0.133 | 0.540 | ||
| −1.324 | 0.051 | −1.109 | 0.643 | −1.673 | ||
| 0.405 (1.643) | 0.115 | −0.276 (1.252) | −0.026 (−0.396) | 0.383 (1.425) | ||
| 0.114 | 0.041 | |||||
| 0.907 | ||||||
| 0.738 | ||||||
| 0.243 | ||||||
| 0.174 | ||||||
| −0.813 (−0.346) | −1.634 (−4.135) | 8.579 (3.191) | −7.774 (−2.633) | 3.835 (0.934) | ||
| 20.332 [0.973] | 21.235 [0.740] | 23.892 [0.693] | 25.034 [0.713] | 24.677 [0.841] | ||
| −4.051 [0.039] | −4.019 [0.047] | −3.076 [0.035] | −2.981 [0.053] | −3.457 [0.017] | ||
| −0.674 [0.491] | −0.756 [0.937] | −0.438 [0.539] | −0.573 [0.613] | −0.497 [0.721] |
Note: *, **, *** means statistically significant at the 1%, 5% and 10% levels respectively. The data in parentheses are Z-value. The numbers in the square brackets are p-value. The data of AR (1) and AR (2) represent respectively the residuals of first-order difference and second-order difference by the Arellano–Bond auto-correlation test.