Statistical Verification of Linear Classifiers
Machine Learning
2025-01-27 v1 Machine Learning
Probability
Statistics Theory
Applications
Statistics Theory
Abstract
We propose a homogeneity test closely related to the concept of linear separability between two samples. Using the test one can answer the question whether a linear classifier is merely ``random'' or effectively captures differences between two classes. We focus on establishing upper bounds for the test's \emph{p}-value when applied to two-dimensional samples. Specifically, for normally distributed samples we experimentally demonstrate that the upper bound is highly accurate. Using this bound, we evaluate classifiers designed to detect ER-positive breast cancer recurrence based on gene pair expression. Our findings confirm significance of IGFBP6 and ELOVL5 genes in this process.
Cite
@article{arxiv.2501.14430,
title = {Statistical Verification of Linear Classifiers},
author = {Anton Zhiyanov and Alexander Shklyaev and Alexey Galatenko and Vladimir Galatenko and Alexander Tonevitsky},
journal= {arXiv preprint arXiv:2501.14430},
year = {2025}
}
Comments
16 pages, 3 figures