Classification for Covid-19 Affected Family Cash Aid Recipients Using Naïve Bayes Algorithm

Mutiara Amazona Sosiawati, Syafriandi Syafriandi, Dony Permana, Zilrahmi
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Abstract

The COVID-19 pandemic that occurred in Indonesia had a huge impact on the country's economy. One of the solutions set by the government in dealing with COVID-19 is to use APBD funds for social assistance in the form of cash, namely "Village Direct Cash Assistance" (BLT DD). With the hope that the people affected by COVID-19 can be helped by this assistance. There are several problems in the distribution of social assistance, one of which is recipients who are not on target. Therefore, it is necessary to use methods to correctly classify recipients. This study uses the Naïve Bayes method to classify people who receive and do not receive aid. From the results obtained on the confussion matrix, the people who received BLT DD assistance and were predicted to receive were as many as 33 people/KK, the people who did not receive BLT DD and were predicted not to receive as many as 34 people/KK, the people who received BLT DD and were predicted not to receive as many as 2 people/KK , and people who do not receive BLT DD and are predicted to receive as many as 6 people/families. As for the classification accuracy value obtained using the Naïve Bayes method is 89%, while the error rate obtained is 11%.
使用Naïve贝叶斯算法对受Covid-19影响的家庭现金援助接受者进行分类
在印度尼西亚发生的新冠肺炎疫情对该国经济产生了巨大影响。政府应对新冠肺炎的解决方案之一是将APBD资金以现金形式用于社会援助,即“村庄直接现金援助”(BLT DD)。希望受COVID-19影响的人们能够得到这一援助的帮助。社会救助的分配存在几个问题,其中一个问题是受助人不到位。因此,有必要使用正确分类接收者的方法。本研究使用Naïve贝叶斯方法对接受和不接受援助的人进行分类。confussion矩阵,从获得的结果的人收到BLT DD援助和预测接收多达33人/ KK,那些没有收到BLT DD和预测不接收多达34人/ KK,收到的人BLT DD和预测不接收多达2人/乐,和那些不接受BLT DD和预计接收多达6人/家庭。使用Naïve贝叶斯方法得到的分类准确率值为89%,错误率为11%。
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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