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Selecting locally specialised classifiers for one-class classification ensembles

机译:选择本地专业分类器以进行一类分类集成

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One-class classification belongs to the one of the novel and very promising topics in contemporary machine learning. In recent years ensemble approaches have gained significant attention due to increasing robustness to unknown outliers and reducing the complexity of the learning process. In our previous works, we proposed a highly efficient one-class classifier ensemble, based on input data clustering and training weighted one-class classifiers on clustered subsets. However, the main drawback of this approach lied in difficult and time consuming selection of a number of competence areas which indirectly affects a number of members in the ensemble. In this paper, we investigate ten different methodologies for an automatic determination of the optimal number of competence areas for the proposed ensemble. They have roots in model selection for clustering, but can be also effectively applied to the classification task. In order to select the most useful technique, we investigate their performance in a number of one-class and multi-class problems. Numerous experimental results, backed-up with statistical testing, allows us to propose an efficient and fully automatic method for tuning the one-class clustering-based ensembles.
机译:一类分类属于当代机器学习中新颖且非常有前途的主题之一。近年来,由于增强了对未知异常值的鲁棒性并降低了学习过程的复杂性,因此合奏方法受到了广泛的关注。在我们之前的工作中,我们基于输入数据聚类和在聚类子集中训练加权一类分类器,提出了一种高效的一类分类器集合。然而,这种方法的主要缺点在于难以选择并且很费时地选择多个权限区域,这间接地影响了集成中的多个成员。在本文中,我们研究了十种不同的方法,可以自动确定拟议合奏的最佳胜任力区域数。它们起源于用于聚类的模型选择,但也可以有效地应用于分类任务。为了选择最有用的技术,我们研究了它们在许多一类和多类问题中的表现。大量的实验结果,加上统计测试的支持,使我们能够提出一种高效且全自动的方法来调整基于聚类的一类聚类。

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