Implementation of Machine Learning and Its Interpretation for Mapping Social Welfare Policy in Indonesia

Aldo Leofiro Irfiansyah, Ari Rismansyah, Novia Permatasari, Isnaeni Noviyanti, Atqo Mardiyanto, Ade Koswara
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Abstract

This research leverages data from the 2022 Early Socio-Economic Registration (Regsosek) activity to develop a machine learning model capable of predicting family expenditure levels based on the Proxy Mean Test (PMT) with high accuracy. By integrating the SHAP (SHapley Additive exPlanations) method for model interpretation, we identify the contributions of socio-economic features to expenditure predictions and link them to relevant social assistance programs. We compare two regions, Kulonprogo Regency and Yogyakarta City, representing varying poverty levels, and identify unique characteristics influencing family welfare in each area. The results highlight that effective policy interventions must be tailored to the unique characteristics of each region and family, taking into account dimensions such as housing, education, income, and community expenditures. This research provides valuable insights for policymakers, demonstrating that successful poverty alleviation policies are data-driven and adaptable to the diverse socio-economic realities across regions.
印度尼西亚社会福利政策制图中机器学习的实施及其解读
本研究利用 2022 年早期社会经济登记(Regsosek)活动的数据开发了一个机器学习模型,该模型能够根据代理均值测试(PMT)高精度地预测家庭支出水平。通过整合 SHAP(SHapley Additive exPlanations)方法进行模型解释,我们确定了社会经济特征对支出预测的贡献,并将其与相关的社会援助计划联系起来。我们比较了代表不同贫困水平的库伦普罗戈地区和日惹市这两个地区,并确定了每个地区影响家庭福利的独特特征。研究结果突出表明,有效的政策干预措施必须符合每个地区和家庭的独特特征,并考虑到住房、教育、收入和社区支出等方面。这项研究为政策制定者提供了宝贵的见解,表明成功的扶贫政策必须以数据为导向,并能适应各地区不同的社会经济现实。
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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