浙江农业科学 ›› 2026, Vol. 67 ›› Issue (6): 1556-1562.DOI: 10.16178/j.issn.0528-9017.20250199

• 农业经济与信息 • 上一篇    下一篇

长江经济带农业绿色全要素生产率测度分析——考虑数据要素投入

冯登魁()   

  1. 河北工程大学 管理工程与商学院,河北 邯郸 056038
  • 收稿日期:2025-03-16 出版日期:2026-06-11 发布日期:2026-06-12
  • 作者简介:冯登魁,研究方向为数据要素、农业绿色发展。E-mail:15028041113@163.com

Analysis of agricultural green total factor productivity in the Yangtze River Economic Belt:considering data factor input

FENG Dengkui()   

  1. School of Management Engineering and Business,Hebei University of Engineering,Handan 056038,Hebei
  • Received:2025-03-16 Online:2026-06-11 Published:2026-06-12

摘要:

数据要素的发展为农业绿色发展注入了新活力,推动了农业创新,助力了农业现代化进程。本文基于2013—2022年长江经济带11个省(市)的面板数据,引入数据要素作为新型投入变量,采用投入导向的超效率SBM-GML模型测度农业绿色全要素生产率(GTFP),并分析其时空演变特征。研究发现:长江经济带农业绿色全要素生产率年均增长3.7%,技术进步是主要驱动因素,但技术效率和规模效率的区域异质性显著;空间上呈现“技术东高西低、规模西扩东滞、效率中部洼地”的复杂特征,贵州、上海和重庆位列前三,江西为唯一负增长区域;数据要素的投入强化了技术进步对农业GTFP的提升作用。本研究为长江经济带农业绿色转型与数据要素协同发展提供了实证依据,并对优化区域资源配置、推动数据要素与农业深度融合具有政策启示。

关键词: 长江经济带, 农业绿色全要素生产率, 数据要素, 超效率SBM模型, GML指数

Abstract:

The development of data factor has injected new vitality into agricultural green development,promoted agricultural innovation,and facilitated the process of agricultural modernization. Based on panel data of 11 provinces(municipalities)in the Yangtze River Economic Belt from 2013 to 2022,this paper introduces data factor as a new input variable and adopts the input-oriented super-efficiency SBM-GML model to measure agricultural green total factor productivity(GTFP)and analyze its spatiotemporal evolution characteristics. The findings show that the agricultural GTFP in the Yangtze River Economic Belt grew at an average annual rate of 3.7%,with technological progress being the main driving factor,while regional heterogeneity in technical efficiency and scale efficiency is significant. Spatially,it presents a complex pattern characterized by “high technological level in the east and low in the west,scale expansion in the west and stagnation in the east,and efficiency depression in the central region”. Guizhou,Shanghai,and Chongqing ranked the top three,while Jiangxi was the only region with negative growth. The input of data factor has strengthened the role of technological progress in improving agricultural GTFP. This study provides empirical evidence for the coordinated development of agricultural green transformation and data factor in the Yangtze River Economic Belt,and offers policy implications for optimizing regional resource allocation and promoting the deep integration of data factor with agriculture.

Key words: Yangtze River Economic Belt, agricultural green total factor productivity, data factor, super-efficiency SBM model, GML index

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