A Comparative Analysis of Logistic Regression and Random Forest for Individual Fairness in Machine Learning
Journal: International Journal of Advanced Engineering Research and Science (Vol.12, No. 05)Publication Date: 2025-05-14
Authors : Sanjit Kumar Saha;
Page : 33-37
Keywords : Disparate Treatment; Logistic Regression; Random Forest; Individual Fairness; Inter-pretability;
Abstract
In high-stakes domains such as finance, healthcare, and criminal justice, machine learning (ML) systems must balance predictive performance with fairness and transparency. This paper presents a comparative analysis of two widely used ML models, logistic regression and random forest, evaluated through the lens of individual fairness. Using the UCI Adult Income and COMPAS datasets, we assess performance in terms of accuracy, F1 score, individual consistency, and disparate treatment.
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