DocumentCode :
28235
Title :
An Adaptive Approach to Learning Optimal Neighborhood Kernels
Author :
Xinwang Liu ; Jianping Yin ; Lei Wang ; Lingqiao Liu ; Jun Liu ; Chenping Hou ; Jian Zhang
Author_Institution :
Sch. of Comput. Sci., Nat. Univ. of Defense Technol., Changsha, China
Volume :
43
Issue :
1
fYear :
2013
fDate :
Feb. 2013
Firstpage :
371
Lastpage :
384
Abstract :
Learning an optimal kernel plays a pivotal role in kernel-based methods. Recently, an approach called optimal neighborhood kernel learning (ONKL) has been proposed, showing promising classification performance. It assumes that the optimal kernel will reside in the neighborhood of a “pre-specified” kernel. Nevertheless, how to specify such a kernel in a principled way remains unclear. To solve this issue, this paper treats the pre-specified kernel as an extra variable and jointly learns it with the optimal neighborhood kernel and the structure parameters of support vector machines. To avoid trivial solutions, we constrain the pre-specified kernel with a parameterized model. We first discuss the characteristics of our approach and in particular highlight its adaptivity. After that, two instantiations are demonstrated by modeling the pre-specified kernel as a common Gaussian radial basis function kernel and a linear combination of a set of base kernels in the way of multiple kernel learning (MKL), respectively. We show that the optimization in our approach is a min-max problem and can be efficiently solved by employing the extended level method and Nesterov´s method. Also, we give the probabilistic interpretation for our approach and apply it to explain the existing kernel learning methods, providing another perspective for their commonness and differences. Comprehensive experimental results on 13 UCI data sets and another two real-world data sets show that via the joint learning process, our approach not only adaptively identifies the pre-specified kernel, but also achieves superior classification performance to the original ONKL and the related MKL algorithms.
Keywords :
Gaussian processes; learning (artificial intelligence); minimax techniques; pattern classification; probability; radial basis function networks; support vector machines; Gaussian radial basis function kernel; Nesterov method; ONKL; adaptive approach; classification performance; extended level method; kernel learning method; kernel-based method; learning process; linear combination; min-max problem; multiple kernel learning; optimal neighborhood kernel learning; parameterized model; probabilistic interpretation; structure parameter; support vector machine; Convex functions; Educational institutions; Kernel; Learning systems; Optimization; Support vector machines; Training; Multiple kernel learning (MKL); optimal neighborhood kernel learning (ONKL); support vector machines (SVMs);
fLanguage :
English
Journal_Title :
Cybernetics, IEEE Transactions on
Publisher :
ieee
ISSN :
2168-2267
Type :
jour
DOI :
10.1109/TSMCB.2012.2207889
Filename :
6253273
Link To Document :
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