2022
DOI: 10.1002/adsu.202200026
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Towards a Greener Future: How do R&D Factor Market Distortions Affect Green Total Factor Energy Efficiency?

Abstract: This study examines the spatial effect of R&D capital and labor market distortions on the green total factor energy efficiency (GTFEE) using a dynamic spatial Durbin model in China from 2000 to 2018. The results show that 1) China's GTFEE exhibits path‐dependent and agglomeration characteristics in terms of time and space, respectively. In both spatial and temporal dimensions, an increase in local GTFEE stimulates future local GTFEE and inhibits future GTFEE growth in neighboring areas. 2) R&D capital … Show more

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Cited by 3 publications
(4 citation statements)
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“…decrease the incentive intensity of wages for laborers, making them unwilling to exert their knowledge and talents, thus discouraging technological innovation (Pang et al, 2022). Based on these findings, Hypothesis 2 is proposed.…”
Section: Transmission Channelsmentioning
confidence: 93%
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“…decrease the incentive intensity of wages for laborers, making them unwilling to exert their knowledge and talents, thus discouraging technological innovation (Pang et al, 2022). Based on these findings, Hypothesis 2 is proposed.…”
Section: Transmission Channelsmentioning
confidence: 93%
“…For the spatial weight matrix, considering geographical and economic connections between regions and to guarantee the robustness of the estimation results, the 0–1 adjacency matrix ( W01), the geographic distance matrix ( Wgeo), and the economic–geographic distance matrix ( Witalicecoitalicgeo) are set (Pang et al, 2022). Specifically, W01 is constructed based on the Queen space adjacency relation, which means that the elements of the spatial weight matrix take the value of 1 when the regions have common boundaries or vertices and 0 otherwise (Wang et al, 2021).…”
Section: Methodology: Models Variables and Datamentioning
confidence: 99%
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