Measuring Inequality Using Geospatial Data

Jaqueson K Galimberti, Stefan Pichler, Regina Pleninger
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Abstract

Abstract The main challenge in studying inequality is limited data availability, which is particularly problematic in developing countries. This study constructs a measure of light-based geospatial income inequality (LGII) for 234 countries/territories from 1992 to 2013 using satellite data on night-lights and gridded population data. Key methodological innovations include the use of varying levels of data aggregation, and a calibration of the lights–prosperity relationship to match traditional inequality measures based on income data. The new LGII measure is significantly correlated with cross-country variation in income inequality. Within countries, the light-based inequality measure is also correlated with measures of energy efficiency and the quality of population data. Two applications of the data are provided in the fields of health economics and international finance. The results show that light- and income-based inequality measures lead to similar results, but the geospatial data offer a significant expansion of the number of observations.
利用地理空间数据衡量不平等
研究不平等的主要挑战是有限的数据可用性,这在发展中国家尤其成问题。本研究利用卫星夜间灯光数据和网格化人口数据,构建了1992年至2013年234个国家/地区基于灯光的地理空间收入不平等(LGII)测度。关键的方法创新包括使用不同级别的数据汇总,以及校准灯光-繁荣关系,以匹配基于收入数据的传统不平等衡量标准。新的LGII衡量标准与收入不平等的跨国变化显著相关。在国家内部,基于光的不平等衡量也与能源效率和人口数据质量的衡量相关联。这些数据在卫生经济学和国际金融领域有两种应用。结果表明,以光照和收入为基础的不平等测量得出了类似的结果,但地理空间数据提供了观察数量的显著扩展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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