Comparative Analysis Performance of K-Nearest Neighbor Algorithm and Adaptive Boosting on the Prediction of Non-Cash Food Aid Recipients

Yusi Yustikasari, H. Mubarok, Rianto Rianto
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引用次数: 0

Abstract

Purpose: The implementation of this manual system is considered less accurate in obtaining the results of social assistance recipients. From these problems to overcome this problem, systematic calculations are needed. In processing data, a model is needed that can explain the data with its application, so a machine learning model is made that can help process the data.Methods: This study's classification of non-cash food social assistance receipts uses the K-Nearest Neighbor and Adaptive Boosting algorithms. This study will compare the performance of the two algorithms.Result: The results obtained for Adaptive Boosting are the best classification results with a maximum accuracy of 100% and produce a high AUC value of 1.0. In comparison, the ROC curve for the K-Nearest Neighbor algorithm produces an accuracy of 96% with an AUC value of 0.94.Novelty: ROC curves in the two algorithms are good classification results because the two graphs cross above the diagonal line and produce an AUC value included in the Excellent classification.
k -最近邻算法与自适应Boosting在非现金粮食援助受援者预测中的性能比较分析
目的:该手工系统的实施被认为在获取社会救助受助人的结果方面准确性较低。从这些问题中,要克服这个问题,需要进行系统的计算。在处理数据的过程中,需要一个能够用数据的应用来解释数据的模型,因此建立了一个能够帮助处理数据的机器学习模型。方法:本研究使用k近邻和自适应增强算法对非现金食品社会救助收入进行分类。本研究将比较这两种算法的性能。结果:Adaptive Boosting得到的结果是最好的分类结果,准确率最高达到100%,AUC值高达1.0。相比之下,k -最近邻算法的ROC曲线准确度为96%,AUC值为0.94。新颖性:两种算法中的ROC曲线都是很好的分类结果,因为两个图在对角线以上相交,产生的AUC值被纳入优秀分类。
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