|Table of Contents|

Regional Difference and Dynamic Evolution of Chinese Agricultural Digitized Production Efficiency

《北方园艺》[ISSN:1001-0009/CN:23-1247/S]

Issue:
2024年5
Page:
139-146
Research Field:
Publishing date:

Info

Title:
Regional Difference and Dynamic Evolution of Chinese Agricultural Digitized Production Efficiency
Author(s):
HU YanyingJIN Meng
(School of Economics and Management,Northeast Forestry University,Harbin,Heilongjiang 150040)
Keywords:
agricultural digital production efficiencyregional differencesmoran indexMalmquist indexconvergence
PACS:
F 323
DOI:
10.11937/bfyy.20233423
Abstract:
Based on the panel data of 30 provinces and cities in mainland China (excluding Tibet) from 2011 to 2021,this study divided the country into four regions,East,Central,West and Northeast.The DEA-BCC model was used to measure and compare the technical efficiency of agricultural digital production in different regions.On this basis,the spatial correlation analysis was carried out with the Moran index.Furthermore,combined with Malmquist productivity index,the evolution trend of agricultural digital production efficiency was explored.China′s overall agricultural digital production efficiency level was high,but only a few provinces and cities in the ‘optimal state’,the difference between regions was obvious.The spatial distribution shows the co-existence of ‘agglomeration’ and ‘differentiation’.Under the influence of the technological progress index,the total factor productivity of agricultural digitalization was increasing,and the eastern region had the highest technological progress index.

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Last Update: 2024-03-28