{"title":"Comparison of Error Rate Prediction Methods in Binary Logistic Regression Modeling for Imbalanced Data","authors":"None Bahri Annur Sinaga, None Dodi Vionanda, None Dony Permana, None Admi Salma","doi":"10.24036/ujsds/vol1-iss4/86","DOIUrl":null,"url":null,"abstract":"Binary logistic regression is a regression analysis used in classification modeling. The performance of binary logistic regression can be seen from the accuracy of the model formed. Accuracy can be measured by predicting the error rate. One method of predicting the error rate that is often used is cross validation. There are three algorithms in cross validation, namely leave one out, hold out, and k-fold. Leave one out is a method that divides data based on the number of observations so that each observation has the opportunity to become testing data but requires a long time in the analysis process when the number of observations is large. Hold out is the simplest algorithm that only divides the data into two parts randomly so there is a possibility that important data does not become training data. K-fold is an algorithm that divides data into several groups, but k-fold is not suitable for data that has a small number of observations. In reality, real data found is often imbalanced. In logistic regression when the data is increasingly imbalanced the prediction results will approach the number of minority classes. This research focuses on the comparison of error rate prediction methods in binary logistic regression modeling with imbalanced data. This study uses three types of data, namely univariate, bivariate and multivariate, which are generated by differences in population mean and correlation between independent variables. The results obtained are k-fold algorithm is the most suitable error rate prediction algorithm applied to binary logistic regression.","PeriodicalId":220933,"journal":{"name":"UNP Journal of Statistics and Data Science","volume":"61 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-08-28","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"UNP Journal of Statistics and Data Science","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.24036/ujsds/vol1-iss4/86","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Binary logistic regression is a regression analysis used in classification modeling. The performance of binary logistic regression can be seen from the accuracy of the model formed. Accuracy can be measured by predicting the error rate. One method of predicting the error rate that is often used is cross validation. There are three algorithms in cross validation, namely leave one out, hold out, and k-fold. Leave one out is a method that divides data based on the number of observations so that each observation has the opportunity to become testing data but requires a long time in the analysis process when the number of observations is large. Hold out is the simplest algorithm that only divides the data into two parts randomly so there is a possibility that important data does not become training data. K-fold is an algorithm that divides data into several groups, but k-fold is not suitable for data that has a small number of observations. In reality, real data found is often imbalanced. In logistic regression when the data is increasingly imbalanced the prediction results will approach the number of minority classes. This research focuses on the comparison of error rate prediction methods in binary logistic regression modeling with imbalanced data. This study uses three types of data, namely univariate, bivariate and multivariate, which are generated by differences in population mean and correlation between independent variables. The results obtained are k-fold algorithm is the most suitable error rate prediction algorithm applied to binary logistic regression.
二元逻辑回归是一种用于分类建模的回归分析方法。二元逻辑回归的性能可以从所形成的模型的准确性看出。准确度可以通过预测错误率来衡量。预测错误率的一种常用方法是交叉验证。交叉验证有三种算法,分别是留一种、保留一种和k-fold。Leave one out是一种根据观测数对数据进行划分的方法,使每个观测值都有机会成为测试数据,但在观测数较大时,在分析过程中需要花费较长的时间。Hold out是最简单的算法,它只是将数据随机分成两部分,因此存在重要数据没有成为训练数据的可能性。K-fold是一种将数据分成几组的算法,但K-fold不适用于观测值较少的数据。在现实中,发现的真实数据往往是不平衡的。在逻辑回归中,当数据越来越不平衡时,预测结果将接近少数类的数量。本文主要研究了不平衡数据下二元逻辑回归模型错误率预测方法的比较。本研究使用了单变量、双变量和多变量三种类型的数据,这些数据是由总体均值的差异和自变量之间的相关性产生的。结果表明,k-fold算法是最适合应用于二元逻辑回归的误差率预测算法。