A first study on bagging fuzzy rule-based classification systems with multicriteria genetic selection of the component classifiers

O. Cordón, A. Quirin, L. Sánchez
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引用次数: 14

Abstract

Fuzzy rule-based classification systems (FRBCSs) are able to design interpretable classifiers but suffer from the curse of dimensionality when dealing with complex problems with a large number of features. In this contribution we explore the use of popular approaches for designing ensembles of classifiers in the machine learning field, bagging and random subspace, to design FRBCS multiclassifiers from a basic, heuristic fuzzy classification rule generation method, aiming to both improve their accuracy and to make them able to deal with high dimensional classification problems. Besides, a multicriteria genetic algorithm is proposed to select the component classifiers in the ensemble guided by the cumulative likelihood in order to look for an appropriate accuracy-complexity trade-off.
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基于bagging模糊规则的多准则分类器遗传选择研究
模糊规则分类系统(FRBCSs)能够设计出可解释的分类器,但在处理具有大量特征的复杂问题时受到维度诅咒的困扰。在这篇贡献中,我们探索了使用机器学习领域中设计分类器集成的流行方法,套袋和随机子空间,从基本的启发式模糊分类规则生成方法设计FRBCS多分类器,旨在提高其准确性并使其能够处理高维分类问题。此外,提出了一种多准则遗传算法,以累积似然为指导,在集成中选择组件分类器,以寻找合适的精度-复杂度权衡。
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