Classification Analysis Of The Eligibility Of Recipients Of Non-Cash Food Assistance And Family Hope Programs In The City Of Sukabumi Using The Naïve Bayes Classifier Algorithm

Ariski Muhammad Nazmi, Prajoko, Agung Pambudi
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Abstract

Providing social assistance is the government's effort to improve the welfare of the underprivileged. Non-Cash Food Assistance (BPNT) and the Family Hope Program (PKH) are two social assistance programs provided by the Indonesian government. BPNT is a food assistance program that is provided non-cash through electronic cards, while PKH is a cash social assistance program provided to poor families with certain criteria. Both programs aim to help the poor meet their food and education needs. To evaluate the effectiveness and efficiency of social assistance programs, a method is needed that can process and analyze data quickly and accurately. One method that can be used is the Naïve Bayes Classifier, which is a probabilistic classification method based on Bayes' theorem. This method can be used to classify data into certain categories based on its probability. In this study, researchers used the Naïve Bayes Classifier method to analyze social assistance data obtained from the BPNT and PKH programs. Data from the Sukabumi City Social Service was used to classify the eligibility of beneficiaries using the Naïve Bayes Classifier algorithm. Out of 5,183 data, 31.2% were classified as "Eligible" and 68.8% as "Ineligible". The algorithm showed 98.77% accuracy in eligibility classification. These results indicate the effectiveness of the Naïve Bayes Classifier algorithm in analyzing social data, providing new insights for better decision-making by relevant agencies in the development of more targeted and efficient social assistance policies
使用 Naïve Bayes 分类器算法对苏卡布米市非现金食品援助和家庭希望计划受助人的资格进行分类分析
提供社会援助是政府改善弱势群体福利的努力。非现金食品援助(BPNT)和家庭希望计划(PKH)是印尼政府提供的两项社会援助计划。BPNT 是一项通过电子卡以非现金形式提供的食品援助计划,而 PKH 则是一项向符合特定条件的贫困家庭提供的现金社会援助计划。这两项计划都旨在帮助穷人满足其食品和教育需求。为了评估社会援助计划的有效性和效率,需要一种能够快速、准确地处理和分析数据的方法。Naïve Bayes 分类器是一种基于贝叶斯定理的概率分类方法。这种方法可用于根据概率将数据归入特定类别。在本研究中,研究人员使用奈伊夫贝叶斯分类器方法分析了从 BPNT 和 PKH 项目中获得的社会援助数据。研究人员使用奈伊夫贝叶斯分类器算法对来自苏卡布米市社会服务处的数据进行了受益人资格分类。在 5183 个数据中,31.2% 被归类为 "合格",68.8% 被归类为 "不合格"。该算法的资格分类准确率为 98.77%。这些结果表明,奈伊夫贝叶斯分类器算法在分析社会数据方面非常有效,为相关机构在制定更有针对性和更有效的社会援助政策时做出更好的决策提供了新的见解。
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