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Identifying irregularity electricity usage of customer behaviors using logistic regression and linear discriminant analysis

机译:使用Logistic回归和线性判别分析来识别客户行为的违规用电量

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This study aims to implement a machine learning technique in identifying the irregularities of customer behavior on the use of prepaid electricity pulses. The methods used are Linear Discriminant Analysis and Logistic Regression. The performance of the classification system will be evaluated using the 10-fold cross-validation technique. Validation results are measured using accuracy, precision and recall values. In this research shows that the use of machine learning technique has a good performance in classification of electrical consumption behavior. Experimental results with the different amount of data testing indicate that Logistic Regression method has high accuracy, precision, and recall value when compared with Linear Discriminant Analysis that is 100%. This is due to Logistic Regression method can predict irregularities accurately because the addition of the amount of data does not affect the performance of the method.
机译:这项研究旨在实施一种机器学习技术,以识别在使用预付费电脉冲时客户行为的不规范之处。使用的方法是线性判别分析和逻辑回归。分类系统的性能将使用10倍交叉验证技术进行评估。验证结果使用准确性,精确度和召回值进行测量。在这项研究中表明,机器学习技术的使用在电能消耗行为的分类中具有良好的性能。不同数据测试量的实验结果表明,与线性判别分析(100%)相比,逻辑回归方法具有较高的准确性,准确性和查全率。这是由于Logistic回归方法可以准确预测不规则性,因为添加数据量不会影响该方法的性能。

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