Semi-supervised Multi-view Individual and Sharable Feature Learning for Webpage Classification

Fei Wu, Xiaoyuan Jing, Jun Zhou, Yi-mu Ji, Chao Lan, Qinghua Huang, Ruchuan Wang
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引用次数: 23

Abstract

Semi-supervised multi-view feature learning (SMFL) is a feasible solution for webpage classification. However, how to fully extract the complementarity and correlation information effectively under semi-supervised setting has not been well studied. In this paper, we propose a semi-supervised multi-view individual and sharable feature learning (SMISFL) approach, which jointly learns multiple view-individual transformations and one sharable transformation to explore the view-specific property for each view and the common property across views. We design a semi-supervised multi-view similarity preserving term, which fully utilizes the label information of labeled samples and similarity information of unlabeled samples from both intra-view and inter-view aspects. To promote learning of diversity, we impose a constraint on view-individual transformation to make the learned view-specific features to be statistically uncorrelated. Furthermore, we train a linear classifier, such that view-specific and shared features can be effectively combined for classification. Experiments on widely used webpage datasets demonstrate that SMISFL can significantly outperform state-of-the-art SMFL and webpage classification methods.
网页分类的半监督多视图个性化和可共享特征学习
半监督多视图特征学习(SMFL)是一种可行的网页分类方法。然而,如何在半监督设置下有效地充分提取互补性和相关性信息一直没有得到很好的研究。在本文中,我们提出了一种半监督的多视图个体和共享特征学习(SMISFL)方法,该方法联合学习多个视图个体转换和一个共享转换,以探索每个视图的视图特定属性和视图之间的公共属性。我们设计了一种半监督的多视图相似保持项,从视图内和视图间两个方面充分利用了标记样本的标签信息和未标记样本的相似信息。为了促进多样性的学习,我们对视图-个体转换施加约束,使学习到的特定于视图的特征在统计上不相关。此外,我们训练了一个线性分类器,使得视图特定特征和共享特征可以有效地结合在一起进行分类。在广泛使用的网页数据集上的实验表明,SMISFL可以显著优于最先进的SMFL和网页分类方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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