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Spatial Identification of Multi-dimensional Poverty in Rural China: A Perspective of Nighttime-Light Remote Sensing Data

机译:中国农村多维贫困的空间识别:夜间光遥感数据的视角

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Poverty has emerged as one of the chronic dilemmas facing the development of human society during the twenty first century. Accurately identifying regions of poverty could lead to more effective poverty-alleviation programs. This study used a new type of remote-sensing data, NPP-VIIRS, to locate poverty-stricken areas based on nighttime light, taking Chongqing Municipality as a sample, and constructed a multidimensional poverty index (MPI) system, guided by a well-known and widely used conceptual framework of sustainable livelihood. A regression model was constructed and results were correlated with those using the average nighttime light index. The model was then tested on Shaanxi Province, and average relative error of the estimated MPI was only 11.12%. These results showed that multidimensional poverty had a high spatial concentration effect at the regional scale. We then applied the index nationwide, at the county scale, analyzing 2852 counties, which we divided into seven classifications, based on the MPI: extremely low, low, relatively low, medium, relatively high, high, and extremely high. Eight hundred forty-eight counties in 26 provinces were identified as multidimensionally poor. Among these, 254 were absolutely poor counties and 543 were relatively poor counties; 195 of these are not on the list of poverty-stricken counties as identified by income levels alone. By improving the accuracy of targeting, this method of identifying multidimensional poverty areas could help the Chinese government improve the effectiveness of poverty reduction strategies, and it could also be used as a reference for other countries or regions that seek to target poor areas that suffer multidimensional deprivation.
机译:贫困已成为二十一世纪在人类社会发展的慢性困境之一。准确识别贫困地区可能导致更有效的贫困方案。本研究采用了一种新型的遥感数据,NPP-VIIR,以夜间光线定位贫困地区,以重庆市为例,构建多维贫困指数(MPI)系统,由井引导 - 已知和广泛使用可持续生计的概念框架。构建回归模型,结果与使用平均夜间光指数的结果相关。然后在陕西省测试该模型,估计MPI的平均相对误差仅为11.12%。这些结果表明,多维贫困在区域规模处具有高空间浓度效应。然后,我们在全国范围应用的指数,在全县规模,分析2852个县,我们分为七个分类的基础上,MPI:非常低,低,较低,中,较高,高,极高。 26个省份八百四十八县被确定为多利绩差。其中,254个是绝对贫困的县,543个县比较差; 195年,这些不仅仅是单独收入水平所识别的贫困县名单。通过提高目标的准确性,这种识别多维贫困地区的方法可以帮助中国政府提高减贫战略的有效性,也可以作为寻求遭受多维地区的其他国家或地区的其他国家或地区的参考剥夺。

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