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High-Dimensional Analysis of Bootstrap Ensemble Classifiers

20 May 2025
Hamza Cherkaoui
Malik Tiomoko
M. Seddik
Cosme Louart
Ekkehard Schnoor
Balázs Kégl
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Abstract

Bootstrap methods have long been a cornerstone of ensemble learning in machine learning. This paper presents a theoretical analysis of bootstrap techniques applied to the Least Square Support Vector Machine (LSSVM) ensemble in the context of large and growing sample sizes and feature dimensionalities. Leveraging tools from Random Matrix Theory, we investigate the performance of this classifier that aggregates decision functions from multiple weak classifiers, each trained on different subsets of the data. We provide insights into the use of bootstrap methods in high-dimensional settings, enhancing our understanding of their impact. Based on these findings, we propose strategies to select the number of subsets and the regularization parameter that maximize the performance of the LSSVM. Empirical experiments on synthetic and real-world datasets validate our theoretical results.

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@article{cherkaoui2025_2505.14587,
  title={ High-Dimensional Analysis of Bootstrap Ensemble Classifiers },
  author={ Hamza Cherkaoui and Malik Tiomoko and Mohamed El Amine Seddik and Cosme Louart and Ekkehard Schnoor and Balazs Kegl },
  journal={arXiv preprint arXiv:2505.14587},
  year={ 2025 }
}
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