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Joint Semi-Supervised Feature Selection and Classification through Bayesian Approach

机译:通过贝叶斯方法联合半监督特征选择和分类

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With the increasing data dimensionality, feature selection has become a fundamental task to deal with high-dimensional data. Semi-supervised feature selection focuses on the problem of how to learn a relevant feature subset in the case of abundant unlabeled data with few labeled data. In recent years, many semi-supervised feature selection algorithms have been proposed. However, these algorithms are implemented by separating the processes of feature selection and classifier training, such that they cannot simultaneously select features and learn a classifier with the selected features. Moreover, they ignore the difference of reliability inside unlabeled samples and directly use them in the training stage, which might cause performance degradation. In this paper, we propose a joint semi-supervised feature selection and classification algorithm (JSFS) which adopts a Bayesian approach to automatically select the relevant features and simultaneously learn a classifier. Instead of using all unlabeled samples indiscriminately, JSFS associates each unlabeled sample with a self-adjusting weight to distinguish the difference between them, which can effectively eliminate the irrelevant unlabeled samples via introducing a left-truncated Gaussian prior. Experiments on various datasets demonstrate the effectiveness and superiority of JSFS.
机译:随着数据维度的增加,特征选择已成为处理高维数据的基本任务。半监控特征选择侧重于如何在具有少数标记数据的大量未标记数据的情况下学习相关特征子集的问题。近年来,已经提出了许多半监督特征选择算法。然而,通过分离特征选择和分类器训练的过程来实现这些算法,使得它们不能同时选择特征并使用所选功能学习分类器。此外,它们忽略了未标记样本内的可靠性差异,并直接在训练阶段使用它们,这可能导致性能下降。在本文中,我们提出了一个联合半监督特征选择和分类算法(JSFS),它采用贝叶斯人方法来自动选择相关功能并同时学习分类器。 JSFS而不是使用所有未标记的样本,JSFS将每个未标记的样本与自调节重物相关联,以区分它们之间的差异,这可以通过引入先前引入左截短的高斯来有效地消除无关的未标记样本。各个数据集的实验证明了JSFS的有效性和优越性。

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