甘肃省多维贫困与贫困县类型

IF 1.5 4区 社会学 Q2 SOCIAL SCIENCES, INTERDISCIPLINARY Economic and Political Studies-EPS Pub Date : 2022-01-02 DOI:10.1080/20954816.2022.2028991
Fangfang Zhang, Hui Liu, Weinan Gu, Jianpeng Zhang
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引用次数: 0

摘要

摘要甘肃省作为中国最贫困的省份之一,在与贫困作斗争中面临着巨大的挑战。本研究强调了研究甘肃省多维贫困的重要性。对甘肃省75个贫困县的多维贫困指数进行了定量测算。通过构建和应用多维贫困衡量系统,将贫困县分为几个类别,确定了贫困的主要驱动因素。本研究为制定有效政策,实现2020年后该地区可持续减贫和高质量发展提供了科学依据。研究结果表明:(1)甘肃省半数以上贫困县的多维贫困程度低于贫困中位数,且存在区域差异;(2) 造成这些县贫困的主要因素包括水和土地资源短缺、教育中断、不良的医疗条件和劳动力利用不足,这些因素表现出空间差异;(3)将贫困县分为四类:生态环境脆弱、自然资源不足的县、社会经济条件不好的县、发展条件不利的县和发展条件相对均衡的县。最后,针对不同类型的贫困县,提出了实现稳定脱贫的政策建议。
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Multidimensional poverty and types of impoverished counties in Gansu province of China
Abstract Gansu province, considered as one of the poorest provinces in China, faces great challenges in fighting against poverty. This study highlights the importance of studying multidimensional poverty in Gansu province. The Multidimensional Poverty Indices of 75 poverty-stricken counties in Gansu province are measured quantitatively. The main driving factors of poverty are identified through the construction and application of a multidimensional poverty measurement system, classifying the impoverished counties into several categories. This study provides a scientific basis for formulating effective policies to achieve sustainable poverty reduction and high-quality development in the region after 2020. The results show that: (1) more than half of the poverty-stricken counties in Gansu province have a degree of multidimensional poverty that is below the median poverty level, with regional variations; (2) the main factors driving poverty in these counties include shortages in water and land resources, educational disruptions, undesirable medical conditions, and the underutilisation of labour, which show spatial variations; and (3) these poverty-stricken counties are categorised into four types: counties with fragile ecological environments and insufficient natural resources, counties with undesirable socio-economic conditions, counties with unfavourable conditions in development, and counties with relatively balanced development conditions. Finally, this paper proposes policy recommendations to achieve stable poverty alleviation based on different types of impoverished counties.
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来源期刊
Economic and Political Studies-EPS
Economic and Political Studies-EPS SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
5.60
自引率
4.20%
发文量
29
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