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Autori principali: Phelps, Nathan, Lizotte, Daniel J., Woolford, Douglas G.
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2501.04903
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author Phelps, Nathan
Lizotte, Daniel J.
Woolford, Douglas G.
author_facet Phelps, Nathan
Lizotte, Daniel J.
Woolford, Douglas G.
contents There is a widespread and longstanding belief that machine learning models are biased towards the majority class when learning from imbalanced binary response data, leading them to neglect or ignore the minority class. Motivated by a recent simulation study that found that decision trees can be biased towards the minority class, our paper aims to reconcile the conflict between that study and other published works. First, we critically evaluate past literature on this problem, finding that failing to consider the conditional distribution of the outcome given the predictors has led to incorrect conclusions about the bias in decision trees. We then show that, under specific conditions, decision trees fit to purity are biased towards the minority class, debunking the belief that decision trees are always biased towards the majority class. This bias can be reduced by adjusting the tree-fitting process to include regularization methods like pruning and setting a maximum tree depth, and/or by using post-hoc calibration methods. Our findings have implications on the use of popular tree-based models, such as random forests. Although random forests are often composed of decision trees fit to purity, our work adds to recent literature indicating that this may not be the best approach.
format Preprint
id arxiv_https___arxiv_org_abs_2501_04903
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Analyzing decision tree bias towards the minority class
Phelps, Nathan
Lizotte, Daniel J.
Woolford, Douglas G.
Machine Learning
There is a widespread and longstanding belief that machine learning models are biased towards the majority class when learning from imbalanced binary response data, leading them to neglect or ignore the minority class. Motivated by a recent simulation study that found that decision trees can be biased towards the minority class, our paper aims to reconcile the conflict between that study and other published works. First, we critically evaluate past literature on this problem, finding that failing to consider the conditional distribution of the outcome given the predictors has led to incorrect conclusions about the bias in decision trees. We then show that, under specific conditions, decision trees fit to purity are biased towards the minority class, debunking the belief that decision trees are always biased towards the majority class. This bias can be reduced by adjusting the tree-fitting process to include regularization methods like pruning and setting a maximum tree depth, and/or by using post-hoc calibration methods. Our findings have implications on the use of popular tree-based models, such as random forests. Although random forests are often composed of decision trees fit to purity, our work adds to recent literature indicating that this may not be the best approach.
title Analyzing decision tree bias towards the minority class
topic Machine Learning
url https://arxiv.org/abs/2501.04903