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A Study on the Use of Multiobjective Genetic Algorithms for Classifier Selection in FURIA-based Fuzzy Multiclassifiers

机译:基于FURIA的模糊多分类器中多目标遗传算法用于分类器选择的研究

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In a preceding contribution, we conducted a study considering a fuzzy multiclassifier system (MCS) design framework based on Fuzzy Unordered Rule Induction Algorithm (FURIA). It served as the fuzzy rule classification learning algorithm to derive the component classifiers considering bagging and feature selection. In this work, we integrate this approach under the overproduce-and-choose strategy. A state-of-the-art evolutionary multiobjective algorithm, namely NSGA-Ⅱ, is used to provide a component classifier selection and improve FURIA-based fuzzy MCS. We propose five different fitness functions based on three different optimization criteria, accuracy, complexity, and diversity. Twenty UCI high dimensional datasets were considered in order to conduct the experiments. A combination between accuracy and diversity criteria provided very promising results, becoming competitive with classical MCS learning methods.
机译:在先前的贡献中,我们进行了一项研究,该研究考虑了基于模糊无序规则归纳算法(FURIA)的模糊多分类器系统(MCS)设计框架。它用作模糊规则分类学习算法,以得出考虑装袋和特征选择的组件分类器。在这项工作中,我们将这种方法整合到了过度选择生产策略下。一种最新的进化多目标算法,即NSGA-Ⅱ,用于提供组件分类器选择并改进基于FURIA的模糊MCS。我们基于三个不同的优化标准,准确性,复杂性和多样性提出了五个不同的适应度函数。为了进行实验,考虑了20个UCI高维数据集。准确性和多样性标准之间的结合提供了非常有希望的结果,与经典的MCS学习方法相比具有竞争力。

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