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Main Authors: Zhao, Ningsheng, Bui, Trang, Yu, Jia Yuan, Dzieciolowski, Krzysztof
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.07033
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author Zhao, Ningsheng
Bui, Trang
Yu, Jia Yuan
Dzieciolowski, Krzysztof
author_facet Zhao, Ningsheng
Bui, Trang
Yu, Jia Yuan
Dzieciolowski, Krzysztof
contents Many classification performance metrics exist, each suited to a specific application. However, these metrics often differ in scale and can exhibit varying sensitivity to class imbalance rates in the test set. As a result, it is difficult to use the nominal values of these metrics to evaluate, compare and monitor classification performances, especially when imbalance rates vary. To address this problem, we introduce the outperformance standardization (OPS) function, a universal standardization method for confusion-matrix-based classification performance (CMBCP) metrics. It maps any given metric to a common scale of $[0,1]$, while providing a clear and consistent interpretation. Specifically, the resulting OPS value (o-value) represents the percentile rank of the observed classification performance within a reference distribution of possible performances. This unified framework enables meaningful comparison and monitoring of classification performance across test sets with differing imbalance rates. We illustrate how o-values can be applied to a variety of commonly used classification performance metrics and demonstrate the utility and robustness of our method through experiments on real-world datasets spanning multiple classification applications.
format Preprint
id arxiv_https___arxiv_org_abs_2505_07033
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Introducing the O-Value: A Universal Standardization for Confusion-Matrix-Based Classification Performance Metrics
Zhao, Ningsheng
Bui, Trang
Yu, Jia Yuan
Dzieciolowski, Krzysztof
Machine Learning
Methodology
Many classification performance metrics exist, each suited to a specific application. However, these metrics often differ in scale and can exhibit varying sensitivity to class imbalance rates in the test set. As a result, it is difficult to use the nominal values of these metrics to evaluate, compare and monitor classification performances, especially when imbalance rates vary. To address this problem, we introduce the outperformance standardization (OPS) function, a universal standardization method for confusion-matrix-based classification performance (CMBCP) metrics. It maps any given metric to a common scale of $[0,1]$, while providing a clear and consistent interpretation. Specifically, the resulting OPS value (o-value) represents the percentile rank of the observed classification performance within a reference distribution of possible performances. This unified framework enables meaningful comparison and monitoring of classification performance across test sets with differing imbalance rates. We illustrate how o-values can be applied to a variety of commonly used classification performance metrics and demonstrate the utility and robustness of our method through experiments on real-world datasets spanning multiple classification applications.
title Introducing the O-Value: A Universal Standardization for Confusion-Matrix-Based Classification Performance Metrics
topic Machine Learning
Methodology
url https://arxiv.org/abs/2505.07033