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Normalized Data Technique Performance for Covid-19 Social Assistance Decision Making : * case student’s internet data social assistance during learning from home due covid19

机译:Covid-19社会援助决策的规范化数据技术性能:*案例学生互联网数据社会援助在学习家庭期间Covid19

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The student internet data assistance program is an effort by educational institutions to support online learning from home during the Covid-19 pandemic. A series of tests are applied to determine the optimization of decision making on the social assistance program performance. This study aims to evaluate the performance of students’ internet data assistance programs using a confusion matrix approach, in particular on the performance of simple, linear and vector normalized data analysis techniques. The representation normalized techniques performance for simple data using SAW, linear data is VIKOR and vector using the MOORA method. The study results found that there were differences in performance in the process of selecting preferences for ranking potential social assistance recipients, as well as a differential in the confusion matrix performance values on the accuracy, precision, recall and error rate values on each method.
机译:学生互联网数据援助计划是教育机构在Covid-19大流行期间支持在家中在线学习的努力。采用一系列测试来确定对社会援助计划绩效的决策优化。本研究旨在利用混乱矩阵方法评估学生互联网数据辅助程序的表现,特别是对简单,线性和向量标准化数据分析技术的性能。使用SAW的简单数据的表示归一化技术性能是使用Moora方法的Vikor和Vector。研究结果发现,在选择潜在社会辅助接收者的偏好方面存在性能存在差异,以及在每种方法上的准确度,精度,召回和错误率值的混淆矩阵性能值中的差异。

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