Generalized Incomplete Multiview Clustering With Flexible Locality Structure Diffusion 论文

2020IEEE Transactions on Cybernetics引用 294
Text and Document Classification TechnologiesFace and Expression RecognitionAdvanced Computing and Algorithms

详细信息

发表期刊/会议
IEEE Transactions on Cybernetics
发表日期
2020-05-07
发表年份
2020

关键词

Text and Document Classification TechnologiesFace and Expression RecognitionAdvanced Computing and Algorithms

摘要

An important underlying assumption that guides the success of the existing multiview learning algorithms is the full observation of the multiview data. However, such rigorous precondition clearly violates the common-sense knowledge in practical applications, where in most cases, only incomplete fractions of the multiview data are given. The presence of the incomplete settings generally disables the conventional multiview clustering methods. In this article, we propose a simple but effective incomplete multiview clustering (IMC) framework, which simultaneously considers the local geometric information and the unbalanced discriminating powers of these incomplete multiview observations. Specifically, a novel graph-regularized matrix factorization model, on the one hand, is developed to preserve the local geometric similarities of the learned common representations from different views. On the other hand, the semantic consistency constraint is introduced to stimulate these view-specific representations toward a unified discriminative representation. Moreover, the importance of different views is adaptively determined to reduce the negative influence of the unbalanced incomplete views. Furthermore, an efficient learning algorithm is proposed to solve the resulting optimization problem. Extensive experimental results performed on several incomplete multiview datasets demonstrate that the proposed method can achieve superior clustering performance in comparison with some state-of-the-art multiview learning methods.