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Evolving Ensemble of Classifiers In Low-Dimensional Spaces Using Multi-Objective Evolutionary Approach

机译:使用多目标进化方法的低维空间中分类器的演化集合

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In this paper we discuss a new strategy to create ensemble of classifiers based on the Multi objective evolutionary optimization. Instead of using feature selection technique which has been widely used in multi objective evolutionary approaches for ensemble generating, we have used a bagging-and-boosting-like strategy which also covers problems with lower dimensional feature spaces in which using feature selection technique may lead to ambiguous subspaces. After creating classifiers based on the amount of error created for each class, a multi-objective genetic algorithm has used to combine them to provide a set of powerful ensembles. Comprehensive experiments demonstrate the effectiveness of the proposed strategy.
机译:在本文中,我们讨论了一种基于多目标进化优化来创建分类器集合的新策略。与其使用已经在多目标进化方法中广泛使用的特征选择技术进行集成生成,我们使用了类似装袋和增强的策略,该策略还涵盖了低维特征空间的问题,在这些问题中使用特征选择技术可能会导致模棱两可的子空间。在基于为每个类别创建的错误量创建分类器之后,多目标遗传算法已将它们组合在一起以提供一组功能强大的合奏。全面的实验证明了所提出策略的有效性。

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