Small Area Estimation of Multidimensional Poverty in East Java Province Using Satellite Imagery

Helen Cantika Laura Aisyatul Ridho, Rindang Bangun Prasetyo
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Abstract

The government has so far focused on a monetary approach to overcoming poverty, while poverty is multidimensional. Holistic and accurate poverty indicators are needed as material for policy formulation, such as the Multidimensional Poverty Index (IKM), which is calculated from raw data from the National Socioeconomic Survey (SUSENAS). However, the direct estimation of the multidimensional poverty headcount (AKM) is only accurate at the provincial level, as seen from the relative standard error (RSE) of several districts and cities, which is still above 25 percent. Increasing the sample size requires time, effort, and cost, so the Small Area Estimation (SAE) method can be an alternative. Apart from using official statistics for accompanying variables, satellite imagery has the advantage of being up-to-date and available up to a granular level. This study aims to estimate the AKM at the district/city level in East Java Province by utilizing satellite imagery and official statistics in SAE. The results showed that SAE HB Beta-logistics, with the accompanying variables combined with satellite imagery and official statistics, has a higher accuracy than direct estimation.
利用卫星图像对东爪哇省小面积多维贫困进行估算
迄今为止,政府一直侧重于以货币方式消除贫困,而贫困是多层面的。需要全面、准确的贫困指标作为制定政策的材料,如多维贫困指数(IKM),该指数是根据全国社会经济调查(SUSENAS)的原始数据计算得出的。然而,多维贫困人口计数(AKM)的直接估算仅在省级层面准确,这一点从几个县市的相对标准误差(RSE)中可以看出,该误差仍在 25% 以上。增加样本量需要时间、精力和成本,因此小地区估计法(SAE)可以作为一种替代方法。除了使用官方统计资料作为伴随变量外,卫星图像还具有最新且可提供细粒度数据的优势。本研究旨在利用卫星图像和 SAE 中的官方统计数据估算东爪哇省县/市一级的 AKM。结果表明,SAE HB Beta-logistics(伴随变量与卫星图像和官方统计数据相结合)比直接估算具有更高的准确性。
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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