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Development of ensemble learning classification with density peak decomposition-based evolutionary multi-objective optimization

机译:基于密度峰分解的进化多目标优化的集合学习分类的开发

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摘要

The ensemble learning methods have always been paid attention to their successful performance in handling supervised classification problems. Nevertheless, some deficiencies, such as inadequate diversity between classifiers and existing redundant classifiers, are among the main challenges in this kind of learning. In recent years, a method called density peak has been used in clustering methods to improve this process, which selects cluster centers from the local density peak. In this paper, inspiring this matter, and using the density peak criterion, a new method is proposed to create parallel ensembles. This criterion creates diverse training sets resulting in the generation of diverse classifiers. In the proposed method, during a multi-objective evolutionary decomposition-based optimization process, some (near) optimum diverse training datasets are created to improve the performance of the non-sequential ensemble learning methods. To do so, in addition to density peak as the first objective, the accuracy criterion is used as the second objective function. To show the superiority of the proposed method, it has been compared with the state-of-the-art methods over 19 datasets. To conduct a better comparison, non-parametric statistical tests are used, where the obtained results demonstrate that the proposed method can significantly dominate the other employed methods.
机译:整体学习方法始终注意其在处理监督分类问题方面的成功表现。然而,一些缺陷,如分类器和现有冗余分类器之间的多样性不足,是这种学习中的主要挑战之一。近年来,一种称为密度峰的方法已用于聚类方法以改善该过程,从局部密度峰值选择群集中心。在本文中,鼓励这一事件,并使用密度峰值标准,提出了一种新方法来创建并行集合。该标准创造了多样化的训练集,从而产生不同的分类器。在所提出的方法中,在基于多目标进化分解的优化过程中,创建了一些(近)最佳的各种训练数据集以提高非顺序集合学习方法的性能。为此,除了密度峰值作为第一目标之外,精度标准用作第二目标函数。为了展示所提出的方法的优越性,它已经与19个数据集的最先进的方法进行了比较。为了进行更好的比较,使用非参数统计测试,其中所得结果表明该方法可以显着地主导其他采用的方法。

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