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典型文献
Dynamic changes and convergence of China's regional green productivity:A dynamic spatial econometric analysis
文献摘要:
Low-carbon economic development is at the heart of the post-pandemic green recovery scheme worldwide.It requires economic recovery without compromising on the environment,implying a critical role that green productivity plays in achieving the carbon neutrality goal.Green productivity measures the quality of economic growth with consideration for energy consumption and environmental pollution.This study employs the slacks-based measure directional distance function(SBM-DDF)approach and the Malmquist-Luenberger(ML)index to calculate green productivity and its components of 30 provinces in China between 2001 and 2018.Using a spatial panel data model,we empirically analyzed the conditional β-convergence of China's green productivity.We found that overall,since 2001,China's green productivity has demonstrated a continuous upward trend.When taking into account spatial factors,China's green productivity demonstrates a significant conditional β-convergence.In terms of regional effects,the results indicate that the green productivity of the eastern and western regions demonstrates club convergence,implying a more balanced green economic development.Moreover,the convergence rate of China's green productivity increases with the addition of environmental regulation variable,and so the corresponding convergence time decreases.It indicates that environmental regulations help to facilitate the convergence of China's green productivity,narrowing the gap between the regional green economic development.The findings provide guideline for achieving a low-carbon development and carbon neutrality from a regional green productivity perspective.
文献关键词:
作者姓名:
Xu-Quan ZHAI;Rui XUE;Bin HE;Dong YANG;Xiang-Yu PEI;Xian LI;Yuli SHAN
作者机构:
Research Center for Socialism with Chinese Characteristics,Zhejiang University,Hangzhou 310058,China;Centre for Corporate Sustainability and Environmental Finance,Department of Applied Finance,Macquarie University,Sydney 2109,Australia;China Center for Public Sector Economic Research,Jilin University,Changchun 130012,China;School of Statistics,Southwestern University of Finance and Economics,Chengdu 611130,China;School of Economics,Jilin University,Changchun 130012,China;College of Textile,Donghua University,Shanghai 201620,China;Integrated Research on Energy,Environment and Society(IREES),Energy and Sustainability Research Institute Groningen,University of Groningen,Groningen 9747 AG,the Netherlands
引用格式:
[1]Xu-Quan ZHAI;Rui XUE;Bin HE;Dong YANG;Xiang-Yu PEI;Xian LI;Yuli SHAN-.Dynamic changes and convergence of China's regional green productivity:A dynamic spatial econometric analysis)[J].气候变化研究进展(英文版),2022(02):266-278
A类:
B类:
Dynamic,changes,convergence,China,regional,green,productivity,dynamic,spatial,econometric,analysis,Low,carbon,economic,development,heart,post,pandemic,recovery,scheme,worldwide,It,requires,without,compromising,implying,critical,role,that,plays,achieving,neutrality,goal,Green,measures,quality,growth,consideration,energy,consumption,environmental,pollution,This,study,employs,slacks,directional,distance,function,SBM,DDF,approach,Malmquist,Luenberger,ML,calculate,its,components,provinces,between,Using,panel,data,model,empirically,analyzed,conditional,We,found,overall,since,has,demonstrated,continuous,upward,trend,When,taking,into,account,factors,demonstrates,significant,In,terms,effects,results,eastern,western,regions,club,more,balanced,Moreover,increases,addition,variable,so,corresponding,decreases,indicates,regulations,help,facilitate,narrowing,gap,findings,provide,guideline,low,from,perspective
AB值:
0.555589
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