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.
CITATION STYLE
Wu, F., Ji, Y., Jing, X. Y., Lan, C., Wang, R., Zhou, J., & Huang, Q. (2019). Semi-supervised multi-view individual and sharable feature learning for webpage classification. In The Web Conference 2019 - Proceedings of the World Wide Web Conference, WWW 2019 (pp. 3349–3355). Association for Computing Machinery, Inc. https://doi.org/10.1145/3308558.3313492
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