Title
Efficient Multiple Kernel Learning Algorithms Using Low-Rank Representation.
Abstract
Unlike Support Vector Machine (SVM), Multiple Kernel Learning (MKL) allows datasets to be free to choose the useful kernels based on their distribution characteristics rather than a precise one. It has been shown in the literature that MKL holds superior recognition accuracy compared with SVM, however, at the expense of time consuming computations. This creates analytical and computational difficulties in solving MKL algorithms. To overcome this issue, we first develop a novel kernel approximation approach for MKL and then propose an efficient Low-Rank MKL (LR-MKL) algorithm by using the Low-Rank Representation (LRR). It is well-acknowledged that LRR can reduce dimension while retaining the data features under a global low-rank constraint. Furthermore, we redesign the binary-class MKL as the multiclass MKL based on pairwise strategy. Finally, the recognition effect and efficiency of LR-MKL are verified on the datasets Yale, ORL, LSVT, and Digit. Experimental results show that the proposed LR-MKL algorithm is an efficient kernel weights allocation method in MKL and boosts the performance of MKL largely.
Year
DOI
Venue
2017
10.1155/2017/3678487
COMPUTATIONAL INTELLIGENCE AND NEUROSCIENCE
Field
DocType
Volume
Kernel approximation,Kernel (linear algebra),Pairwise comparison,Pattern recognition,Computer science,Multiple kernel learning,Support vector machine,Algorithm,Artificial intelligence,Machine learning,Computation
Journal
2017
ISSN
Citations 
PageRank 
1687-5265
2
0.37
References 
Authors
13
4
Name
Order
Citations
PageRank
Wenjia Niu117830.33
Kewen Xia22815.52
Baokai Zu341.44
Jianchuan Bai420.37