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Autori principali: Przybyl, Bartosz, Stefanowski, Jerzy
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2410.03519
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author Przybyl, Bartosz
Stefanowski, Jerzy
author_facet Przybyl, Bartosz
Stefanowski, Jerzy
contents Learning classifiers from imbalanced and concept drifting data streams is still a challenge. Most of the current proposals focus on taking into account changes in the global imbalance ratio only and ignore the local difficulty factors, such as the minority class decomposition into sub-concepts and the presence of unsafe types of examples (borderline or rare ones). As the above factors present in the stream may deteriorate the performance of popular online classifiers, we propose extensions of resampling online bagging, namely Neighbourhood Undersampling or Oversampling Online Bagging to take better account of the presence of unsafe minority examples. The performed computational experiments with synthetic complex imbalanced data streams have shown their advantage over earlier variants of online bagging resampling ensembles.
format Preprint
id arxiv_https___arxiv_org_abs_2410_03519
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Improving Online Bagging for Complex Imbalanced Data Stream
Przybyl, Bartosz
Stefanowski, Jerzy
Machine Learning
Learning classifiers from imbalanced and concept drifting data streams is still a challenge. Most of the current proposals focus on taking into account changes in the global imbalance ratio only and ignore the local difficulty factors, such as the minority class decomposition into sub-concepts and the presence of unsafe types of examples (borderline or rare ones). As the above factors present in the stream may deteriorate the performance of popular online classifiers, we propose extensions of resampling online bagging, namely Neighbourhood Undersampling or Oversampling Online Bagging to take better account of the presence of unsafe minority examples. The performed computational experiments with synthetic complex imbalanced data streams have shown their advantage over earlier variants of online bagging resampling ensembles.
title Improving Online Bagging for Complex Imbalanced Data Stream
topic Machine Learning
url https://arxiv.org/abs/2410.03519