Authors
Marius Kloft, Ulrich Rückert, Peter L Bartlett
Publication date
2010
Conference
Machine Learning and Knowledge Discovery in Databases: European Conference, ECML PKDD 2010, Barcelona, Spain, September 20-24, 2010, Proceedings, Part II 21
Pages
66-81
Publisher
Springer Berlin Heidelberg
Description
Recent research on multiple kernel learning has lead to a number of approaches for combining kernels in regularized risk minimization. The proposed approaches include different formulations of objectives and varying regularization strategies. In this paper we present a unifying optimization criterion for multiple kernel learning and show how existing formulations are subsumed as special cases. We also derive the criterion’s dual representation, which is suitable for general smooth optimization algorithms. Finally, we evaluate multiple kernel learning in this framework analytically using a Rademacher complexity bound on the generalization error and empirically in a set of experiments.
Total citations
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Scholar articles
M Kloft, U Rückert, PL Bartlett - Machine Learning and Knowledge Discovery in …, 2010