Multi-View Collaborative Representation Classification

Yingshan Tao, Haoliang Yuan, Chun Sing Lai, L. Lai
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Abstract

With the increase popularity of multi-view data, multi-view learning has attracted vital attentions in pattern recognition as well as machine learning. Most of existing methods apply in traditional single view learning. However, these methods neglect the complementary information among the views. The aim of multi-view is to discover complementary information and enhance the single view learning result. Multi-view is capable of capture incomplete and different types of information from multiple sources. However, multi-views may contain redundant information. Many multi-view methods assume that multi-views are generated from various view-specific generation matrices. This paper proposes the multi-view collaborative representation classification (MVCRC) algorithm which contains the information of different views and the connection of view-to-view. Experimental results conducted on five practical databases are used to confirm the effectiveness of the proposed approach.
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多视图协同表示分类
随着多视图数据的日益普及,多视图学习在模式识别和机器学习领域受到了广泛关注。现有的方法大多适用于传统的单视图学习。然而,这些方法忽略了视图之间的互补信息。多视图学习的目的是发现互补信息,提高单视图学习的效果。多视图能够捕获来自多个来源的不完整和不同类型的信息。但是,多视图可能包含冗余信息。许多多视图方法假设多视图是由各种特定于视图的生成矩阵生成的。提出了包含不同视图信息和视图间连接的多视图协同表示分类算法(MVCRC)。在五个实际数据库上进行的实验结果验证了该方法的有效性。
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