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Semi-supervised multi-class Adaboost by exploiting unlabeled data

机译:通过利用未标记的数据进行半监督的多类Adaboost

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摘要

Semi-supervised learning has attracted much attention in pattern recognition and machine learning. Most semi-supervised learning algorithms are proposed for binary classification, and then extended to multi-class cases by using approaches such as one-against-the-rest. In this work, we propose a semi-supervised learning method by using the multi-class boosting, which can directly classify the multi-class data and achieve high classification accuracy by exploiting the unlabeled data. There are two distinct features in our proposed semi-supervised learning approach: (1) handling multi-class cases directly without reducing them to multiple two-class problems, and (2) the classification accuracy of each base classifier requiring only at least 1/K or better than l/K(Kis the number of classes). Experimental results show that the proposed method is effective based on the testing of 21 UCI benchmark data sets.
机译:半监督学习在模式识别和机器学习中引起了很多关注。提出了大多数半监督学习算法用于二进制分类,然后通过使用诸如“休息-休息”之类的方法将其扩展到多类情况。在这项工作中,我们提出了一种使用多类增强的半监督学习方法,该方法可以直接对多类数据进行分类,并通过利用未标记的数据来实现高分类精度。在我们提出的半监督学习方法中,有两个明显的特征:(1)直接处理多类案例而不将它们归结为多个两类问题;(2)每个基本分类器的分类精度至少需要1 / K或优于l / K(K是类数)。实验结果表明,该方法在对21个UCI基准数据集进行测试的基础上是有效的。

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