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Decision Support System for Covid19 Affected Family Cash Aid Recipients Using the Naïve Bayes Algorithm and the Weight Product Method

机译:Covid19决策支持系统使用Naïve贝叶斯算法和重量产品方法影响家庭现金援助受体

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The purpose of this study was to predict the recipients of cash assistance and to evaluate Naïve Bayes in predicting recipients of cash assistance from families affected by Covid19. This study uses the Naïve Bayes algorithm to calculate the accuracy and classification of cash transfer recipient data. The data used is logical data then processed and calculated. The variables used are Age, Income, College Status, and labels using two classes, namely Cannot and Can. From the results of this study, it can be concluded that the recipients of cash assistance in Village X can be predicted Naïve Bayes using a training value of 10%. Based on the results of the evaluation using confusion matrix and testing the accuracy of Naïve Bayes is 67%. For the calculation of the Weighted Product method using variables Age, Income, Education, Working Status, Family Status and there are two alternatives, namely Cannot and Can. From the Weighted Product calculation, it produces a Vector S ranking value of 2.24 and Vector V of 0.66, which states that families affected by Covid19 have the right to receive cash assistance.
机译:本研究的目的是预测现金援助的接受人,并评估Naïve贝父预测受Covid19影响的家庭的现金援助接收者。本研究使用Naïve贝叶斯算法来计算现金转移收件人数据的准确性和分类。使用的数据是逻辑数据然后处理和计算。使用的变量是年龄,收入,大学状态和使用两个课程的标签,即不能和可以。从本研究的结果中,可以得出结论,村X的现金援助接收者可以使用10%的培训价值预测天真贝叶斯。基于使用混淆矩阵的评估结果,并测试幼稚贝叶斯的准确性为67%。为了计算使用变量年龄,收入,教育,工作地位,家庭状况和有两个替代方案的加权产品方法,即不能和可以。从加权产品计算中,它产生的矢量S排名值为2.24和0.66的载体v,这些v为0.66,这使得受Covid19影响的家庭有权获得现金援助。

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