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Autori principali: Nishimura, Kotaro J., Sakumura, Yuichi, Ikeda, Kazushi
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2510.04046
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author Nishimura, Kotaro J.
Sakumura, Yuichi
Ikeda, Kazushi
author_facet Nishimura, Kotaro J.
Sakumura, Yuichi
Ikeda, Kazushi
contents Class imbalance is a common challenge in real-world binary classification tasks, often leading to predictions biased toward the majority class and reduced recognition of the minority class. This issue is particularly critical in domains such as medical diagnosis and anomaly detection, where correct classification of minority classes is essential. Conventional methods often fail to deliver satisfactory performance when the imbalance ratio is extremely severe. To address this challenge, we propose a novel approach called Kernel-density-Oriented Threshold Adjustment with Regional Optimization (KOTARO), which extends the framework of kernel density estimation (KDE) by adaptively adjusting decision boundaries according to local sample density. In KOTARO, the bandwidth of Gaussian basis functions is dynamically tuned based on the estimated density around each sample, thereby enhancing the classifier's ability to capture minority regions. We validated the effectiveness of KOTARO through experiments on both synthetic and real-world imbalanced datasets. The results demonstrated that KOTARO outperformed conventional methods, particularly under conditions of severe imbalance, highlighting its potential as a promising solution for a wide range of imbalanced classification problems
format Preprint
id arxiv_https___arxiv_org_abs_2510_04046
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Adaptive kernel-density approach for imbalanced binary classification
Nishimura, Kotaro J.
Sakumura, Yuichi
Ikeda, Kazushi
Machine Learning
Class imbalance is a common challenge in real-world binary classification tasks, often leading to predictions biased toward the majority class and reduced recognition of the minority class. This issue is particularly critical in domains such as medical diagnosis and anomaly detection, where correct classification of minority classes is essential. Conventional methods often fail to deliver satisfactory performance when the imbalance ratio is extremely severe. To address this challenge, we propose a novel approach called Kernel-density-Oriented Threshold Adjustment with Regional Optimization (KOTARO), which extends the framework of kernel density estimation (KDE) by adaptively adjusting decision boundaries according to local sample density. In KOTARO, the bandwidth of Gaussian basis functions is dynamically tuned based on the estimated density around each sample, thereby enhancing the classifier's ability to capture minority regions. We validated the effectiveness of KOTARO through experiments on both synthetic and real-world imbalanced datasets. The results demonstrated that KOTARO outperformed conventional methods, particularly under conditions of severe imbalance, highlighting its potential as a promising solution for a wide range of imbalanced classification problems
title Adaptive kernel-density approach for imbalanced binary classification
topic Machine Learning
url https://arxiv.org/abs/2510.04046