集成分类方法统一的框架

Mohammad Ali Bagheri, Q. Gao, Sergio Escalera
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引用次数: 14

摘要

多分类器系统也称为分类器集成系统,近年来由于在不同应用中提高了分类精度而受到广泛关注。为了利用单个分类器的优势,已经提出了各种各样的集成方法。在本文中,我们提出了一个多分类器系统的统一框架,它通过一个分类器集合来统一大多数分类方法。具体来说,我们将机器学习中的两个研究方向联系起来:基于类二值化技术的多类分类和集成分类策略。根据所提出的框架,各种集成分类策略将大致分为四种主要方法。然后,我们简要介绍了基于这些主要方法的集成方法,以及将它们结合起来的主要技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Framework towards the Unification of Ensemble Classification Methods
Multiple classifier systems, also known as classifier ensembles, have received great attention in recent years because of the improved classification accuracy in different applications. A large variety of ensemble methods have been proposed in order to exploit strengths of individual classifiers. In this paper, we present a unifying framework for multiple classifier systems, which unites most classification methods by an ensemble of classifiers. Specifically, we link two research lines in machine learning: multiclass classification based on the class binarization techniques and the strategies of ensemble classification. With the proposed framework, the various ensemble classification strategies will be broadly categorized into four main approaches. Then, we provide a brief survey of ensemble methods based on these main approaches as well as principle techniques proposed to combine them.
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