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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >An overview of ensemble methods for binary classifiers in multi-class problems: Experimental study on one-vs-one and one-vs-all schemes
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An overview of ensemble methods for binary classifiers in multi-class problems: Experimental study on one-vs-one and one-vs-all schemes

机译:多类问题中二元分类器的集成方法概述:一对一和一对多方案的实验研究

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摘要

Classification problems involving multiple classes can be addressed in different ways. One of the most popular techniques consists in dividing the original data set into two-class subsets, learning a different binary model for each new subset. These techniques are known as binarization strategies. In this work, we are interested in ensemble methods by binarization techniques; in particular, we focus on the well-known one-vs-one and one-vs-all decomposition strategies, paying special attention to the final step of the ensembles, the combination of the outputs of the binary classifiers. Our aim is to develop an empirical analysis of different aggregations to combine these outputs. To do so, we develop a double study: first, we use different base classifiers in order to observe the suitability and potential of each combination within each classifier. Then, we compare the performance of these ensemble techniques with the classifiers themselves. Hence, we also analyse the improvement with respect to the classifiers that handle multiple classes inherently. We carry out the experimental study with several well-known algorithms of the literature such as Support Vector Machines, Decision Trees, Instance Based Learning or Rule Based Systems. We will show, supported by several statistical analyses, the goodness of the binarization techniques with respect to the base classifiers and finally we will point out the most robust techniques within this framework.
机译:涉及多个类别的分类问题可以用不同的方式解决。最受欢迎的技术之一是将原始数据集分为两类,为每个新子集学习不同的二进制模型。这些技术称为二值化策略。在这项工作中,我们对采用二值化技术的整体方法感兴趣;特别是,我们专注于众所周知的一对一分解和一对多分解策略,特别注意合奏的最后一步,即二元分类器的输出的组合。我们的目标是对不同汇总进行实证分析,以结合这些输出。为此,我们进行了双重研究:首先,我们使用不同的基本分类器,以观察每个分类器中每种组合的适用性和潜力。然后,我们将这些集成技术与分类器本身的性能进行比较。因此,我们还分析了固有地处理多个类的分类器的改进。我们使用几种著名的算法算法进行实验研究,例如支持向量机,决策树,基于实例的学习或基于规则的系统。在一些统计分析的支持下,我们将证明二值化技术相对于基本分类器的优越性,最后我们将指出该框架内最可靠的技术。

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