Accuracy Comparison of Logistic Regression and Decision Tree Prediction Models Using Machine Learning Technique

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Date

2025

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Springer Science and Business Media Deutschland GmbH

Abstract

With the advancements in data science and machine learning, it has become beneficial for scientists, technologists, social scientists, and businessmen to adopt the latest developments in machine learning into their domains to make important decisions about their problems of interest. The biggest advantage of machine learning algorithms in such fields is their prediction capability. Statistical tools in powerful machine-learning languages like R have led to simpler solutions to more complex problems. Various models are in use in the process of making decisions and predictions. The most commonly used model in many situations is the regression model. Herein, it is intended to use the logistic regression model and the decision tree model in the prediction of binary categorical variables. R programming is used in the development of these prediction models. It is intended to compare the accuracy of the two models by using the confusion matrices. Two different datasets have been used for the prediction using these models and their comparisons. It has been observed that prediction using a decision tree model has a better accuracy as compared to that of a logistic regression model. © The Author(s), under exclusive license to Springer Nature Switzerland AG 2025.

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Keywords

Accuracy, Confusion matrix, Decision tree, Logistic regression, Prediction, R Programming

Citation

Lecture Notes in Networks and Systems, 2025, Vol.1398 LNNS, , p. 452-460

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