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Single Classifier Selection for Ensemble Learning

机译:集成学习的单个分类器选择

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Ensemble classification is one of representative learning techniques in the field of machine learning, which combines a set of single classifiers together aiming at achieving better classification performance. Not every arbitrary set of single classifiers can obtain a good ensemble classifier. The efficient and necessary condition to construct an accurate ensemble classifier is that the single classifiers should be accurate and diverse. In this paper, we first formally give the definitions of accurate and diverse classifiers and put forward metrics to quantify the accuracy and diversity of the single classifiers; afterwards, we propose a novel parameter-free method to pick up a set of accurate and diverse single classifiers for ensemble. The experimental results on real world data sets show the effectiveness of the proposed method which could improve the performance of the representative ensemble classifier Bagging.
机译:集成分类是机器学习领域中的一种代表性学习技术,它结合了一组单个分类器,旨在实现更好的分类性能。并非每个单一分类器的任意集合都能获得良好的整体分类器。构建准确的集成分类器的有效和必要条件是单个分类器应该准确且多样。在本文中,我们首先正式给出准确而多样的分类器的定义,并提出度量标准以量化单个分类器的准确性和多样性。之后,我们提出了一种新颖的无参数方法来选取一组准确而多样的单个分类器进行集成。在现实世界数据集上的实验结果表明,该方法的有效性,可以提高代表性集合分类器Bagging的性能。

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