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On incrementally using a small portion of strong unlabeled data for semi-supervised learning algorithms

机译:逐步将一小部分强的未标记数据用于半监督学习算法

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The aim of this paper is to present an incremental selection strategy by which the classification accuracy of semi-supervised learning (SSL) algorithms can be improved. In SSL, both a limited number of labeled and a multitude of unlabeled data are utilized to learn a classification model. However, it is also well known that the utilization of the unlabeled data is not always helpful for SSL algorithms. To efficiently use them in learning the classification model, some of the unlabeled data that are deemed useful for the learning process are selected and given the correctly estimated labels. To address this problem, especially when dealing with semi-supervised MarginBoost (SSMB) algorithm (d'Alche-Buc et al., 2002), in this paper, two selection strategies, named simply recycled selection and incrementally reinforced selection, are considered and empirically compared. Our experimental results, obtained with well-known benchmark data sets, including SSL-type benchmarks and some UCl data sets, demonstrate that the latter, i.e., selecting only a small portion of strong examples from the available unlabeled data in an incremental fashion, can compensate for the shortcomings of the existing SSMB algorithm. Moreover, compared to the former, it generally achieves better classification accuracy results.
机译:本文的目的是提出一种增量选择策略,通过该策略可以提高半监督学习(SSL)算法的分类精度。在SSL中,有限数量的标记数据和大量未标记数据都被用来学习分类模型。但是,众所周知,未标记数据的使用并不总是对SSL算法有帮助。为了有效地在学习分类模型中使用它们,选择了一些对学习过程有用的未标记数据,并为其提供了正确估计的标记。为了解决这个问题,特别是在处理半监督MarginBoost(SSMB)算法(d'Alche-Buc等人,2002)时,本文考虑了两种选择策略,分别称为循环选择和增量强化选择,并且根据经验进行比较。我们的实验结果是从众所周知的基准数据集(包括SSL型基准数据和一些UCl数据集)获得的,证明了后者,即以递增方式从可用的未标记数据中仅选择一小部分强示例,可以弥补现有SSMB算法的缺点。而且,与前者相比,它通常获得更好的分类精度结果。

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