Verification of Covid-19 Social Assistance Recipients using Naïve Bayes Classifier

R. Kamali, Y. Sari, I. Aldmour, Rahmat Budiarto
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Abstract

The Indonesian government launches the Covid-19 social assistance program to reduce the impacts of the economic downturn during the pandemic. The recipients of social assistance in Sukabumi Selatan District of Jakarta Province is collected form Neighborhood Association (RT/RW). However, this mechanism has limitations in terms of feasibility assessment through direct verification which is not optimal due to social restriction activities. At the same time, data is also collected through the regular recipients of social aid program, so there is a data discrepancy that causing a bias in determining the recipients’ feasibility. Therefore, a mechanism is required to assess the eligibility of the recipients. This study aims to assist Social Service Agency of Sukabumi Selatan district, in assessing the eligibility of the recipients using Naïve Bayes classifier and K-Nearest Neighbors (K-NN) classifier as comparison. Experiments using Cross-Industry Standard Process for Data Mining (CRISP-DM) model were carried out on a collected dataset, and the results show that Naïve Bayes classifier shows the best result with 93% accuracy, 86% precision and 100% recall, while K-NN has 90% accuracy, 82% precision and 98% recall. This research may assist the Social Service Agency of the district to determining more accurately the target recipients.
利用Naïve贝叶斯分类器验证Covid-19社会救助受助人
印尼政府启动新冠肺炎社会援助计划,以减少疫情期间经济衰退的影响。雅加达省Sukabumi Selatan区的社会援助受助人由社区协会(RT/RW)收集。但该机制在直接验证的可行性评估方面存在局限性,由于社会约束活动的存在,该机制并非最优。同时,数据也是通过社会救助计划的常规受助人收集的,因此存在数据差异,导致在确定受助人可行性时存在偏差。因此,需要一种机制来评估接受者的资格。本研究旨在协助Sukabumi Selatan区的社会服务机构,使用Naïve贝叶斯分类器与k -最近邻(K-NN)分类器进行比较,评估受助人的资格。利用CRISP-DM模型在收集的数据集上进行了实验,结果表明Naïve贝叶斯分类器的准确率为93%,精度为86%,召回率为100%,K-NN分类器的准确率为90%,精度为82%,召回率为98%。本研究可协助地区社会服务机构更准确地确定目标受助人。
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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