Efficient Methods for Robust Classification Under Uncertainty in Kernel Matrices
Data(s) |
2012
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Resumo |
In this paper we study the problem of designing SVM classifiers when the kernel matrix, K, is affected by uncertainty. Specifically K is modeled as a positive affine combination of given positive semi definite kernels, with the coefficients ranging in a norm-bounded uncertainty set. We treat the problem using the Robust Optimization methodology. This reduces the uncertain SVM problem into a deterministic conic quadratic problem which can be solved in principle by a polynomial time Interior Point (IP) algorithm. However, for large-scale classification problems, IP methods become intractable and one has to resort to first-order gradient type methods. The strategy we use here is to reformulate the robust counterpart of the uncertain SVM problem as a saddle point problem and employ a special gradient scheme which works directly on the convex-concave saddle function. The algorithm is a simplified version of a general scheme due to Juditski and Nemirovski (2011). It achieves an O(1/T-2) reduction of the initial error after T iterations. A comprehensive empirical study on both synthetic data and real-world protein structure data sets show that the proposed formulations achieve the desired robustness, and the saddle point based algorithm outperforms the IP method significantly. |
Formato |
application/pdf |
Identificador |
http://eprints.iisc.ernet.in/45795/1/jol_mac_lea_res_13-2923_2012.pdf Ben-Tal, Aharon and Bhadra, Sahely and Bhattacharyya, Chiranjib and Nemirovski, Arkadi (2012) Efficient Methods for Robust Classification Under Uncertainty in Kernel Matrices. In: JOURNAL OF MACHINE LEARNING RESEARCH, 13 . pp. 2923-2954. |
Publicador |
MICROTOME PUBL |
Relação |
http://jmlr.csail.mit.edu/papers/v13/ http://eprints.iisc.ernet.in/45795/ |
Palavras-Chave | #Computer Science & Automation (Formerly, School of Automation) |
Tipo |
Journal Article PeerReviewed |