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首页> 外文期刊>IEEE transactions on evolutionary computation >An Evolutionary Multiobjective Model and Instance Selection for Support Vector Machines With Pareto-Based Ensembles
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An Evolutionary Multiobjective Model and Instance Selection for Support Vector Machines With Pareto-Based Ensembles

机译:基于帕累托集成的支持向量机的进化多目标模型和实例选择

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摘要

Support vector machines (SVMs) are among the most powerful learning algorithms for classification tasks. However, these algorithms require a high computational cost during the training phase, which can limit their application on large-scale datasets. Moreover, it is known that their effectiveness highly depends on the hyper-parameters used to train the model. With the intention of dealing with these, this paper introduces an evolutionary multiobjective model and instance selection (IS) approach for SVMs with Pareto-based ensemble, whose goals are, precisely, to optimize the size of the training set and the classification performance attained by the selection of the instances, which can be done using either a wrapper or a filter approach. Due to the nature of multiobjective evolutionary algorithms, several Pareto optimal solutions can be found. We study several ways of using such information to perform a classification task. To accomplish this, our proposal performs a processing over the Pareto solutions in order to combine them into a single ensemble. This is done in five different ways, which are based on: 1) a global Pareto ensemble; 2) error reduction; 3) a complementary error reduction; 4) maximized margin distance; and 5) boosting. Through a comprehensive experimental study we evaluate the suitability of the proposed approach and the Pareto processing, and we show its advantages over a single-objective formulation, traditional IS techniques, and learning algorithms.
机译:支持向量机(SVM)是用于分类任务的最强大的学习算法之一。但是,这些算法在训练阶段需要很高的计算成本,这可能会限制其在大规模数据集上的应用。而且,已知它们的有效性高度取决于用于训练模型的超参数。为了解决这些问题,本文介绍了一种基于Pareto集成的支持向量机的进化多目标模型和实例选择(IS)方法,其目标是精确地优化训练集的大小和通过分类获得的分类性能。实例的选择,可以使用包装器或过滤器方法来完成。由于多目标进化算法的性质,可以找到几种帕累托最优解。我们研究了使用此类信息执行分类任务的几种方法。为此,我们的提案对Pareto解决方案进行了处理,以将它们组合为一个整体。这可以通过五种不同的方式来完成,这些方式基于:1)全球帕累托乐团; 2)减少错误; 3)减少误差的补充; 4)最大的边距;和5)提升。通过全面的实验研究,我们评估了所提出的方法和Pareto处理的适用性,并显示了其在单目标公式,传统IS技术和学习算法方面的优势。

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