Co-training by Committee: A New Semi-supervised Learning Framework

Mohamed Farouk Abdel Hady, F. Schwenker
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引用次数: 47

Abstract

For many data mining applications, it is necessary to develop algorithms that use unlabeled data to improve the accuracy of the supervised learning. Co-Training is a popular semi-supervised learning algorithm. It assumes that each example is represented by two or more redundantly sufficient sets of features (views) and these views are independent given the class. However, these assumptions are not satisfied in many real-world application domains. Therefore, we present a framework called co-training by committee (CoBC), in which a set of diverse classifiers are used to learn each other. The framework is a simple, general single-view semi-supervised learner that can use any ensemble learner to build diverse committees. Experimental studies on CoBC using bagging, AdaBoost and the random subspace method (RSM) as ensemble learners demonstrate that error diversity among classifiers leads to an effective co-training that requires neither redundant and independent views nor different learning algorithms.
委员会共同培训:一种新的半监督学习框架
对于许多数据挖掘应用,有必要开发使用未标记数据的算法来提高监督学习的准确性。协同训练是一种流行的半监督学习算法。它假设每个示例由两个或更多冗余的足够的特征(视图)集表示,并且给定类,这些视图是独立的。然而,这些假设在许多实际应用领域中并不满足。因此,我们提出了一个名为委员会共同训练(CoBC)的框架,其中一组不同的分类器被用来相互学习。该框架是一个简单、通用的单视图半监督学习器,可以使用任何集成学习器来构建不同的委员会。使用bagging、AdaBoost和随机子空间方法(RSM)作为集成学习器的CoBC实验研究表明,分类器之间的误差多样性导致有效的共同训练,不需要冗余和独立的视图,也不需要不同的学习算法。
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