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A novel multi-view learning developed from single-view patterns
Authors:Zhe Wang  Songcan Chen  Daqi Gao
Affiliation:1. School of Computer Science, China University of Geosciences, Wuhan 430074, PR China;2. Department of Pharmacy, The Affiliated Huai’an Hospital of Xuzhou Medical University, Huai’an 223002, PR China;3. School of Computer and Control Engineering, Yantai University, Yantai 264005, PR China;4. College of Computer, National University of Defense Technology, Changsha 410073, PR China;1. College of Information Science and Engineering, Guilin University of Technology, Guilin 541004, Guangxi, China;2. School of Computer, Electronics and Information, Guangxi University, Nanning 530004, Guangxi, China;3. Guangxi Key Lab of Multi-source Information Mining & Security, Guangxi Normal University, Guilin 541004 Guangxi, China;4. Columbia University, New York 10027, USA
Abstract:The existing multi-view learning (MVL) learns how to process patterns with multiple information sources. In generalization this MVL is proven to have a significant advantage over the usual single-view learning (SVL). However, in most real-world cases we only have single source patterns to which the existing MVL is unable to be directly applied. This paper aims to develop a new MVL technique for single source patterns. To this end, we first reshape the original vector representation of single source patterns into multiple matrix representations. In doing so, we can change the original architecture of a given base classifier into different sub-ones. Each newly generated sub-classifier can classify the patterns represented with the matrix. Here each sub-classifier is taken as one view of the original base classifier. As a result, a set of sub-classifiers with different views are come into being. Then, one joint rather than separated learning process for the multi-view sub-classifiers is developed. In practice, the original base classifier employs the vector-pattern-oriented Ho–Kashyap classifier with regularization learning (called MHKS) as a paradigm which is not limited to MHKS. Thus, the proposed joint multi-view learning is named as MultiV-MHKS. Finally, the feasibility and effectiveness of the proposed MultiV-MHKS is demonstrated by the experimental results on benchmark data sets. More importantly, we have demonstrated that the proposed multi-view approach generally has a tighter generalization risk bound than its single-view one in terms of the Rademacher complexity analysis.
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