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arxiv: 1103.5202 · v2 · pith:VNCT2QC6new · submitted 2011-03-27 · 📊 stat.ML

Fast Learning Rate of lp-MKL and its Minimax Optimality

classification 📊 stat.ML
keywords ratelearninglp-mixed-normlp-mklminimaxballboundcharacterized
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In this paper, we give a new sharp generalization bound of lp-MKL which is a generalized framework of multiple kernel learning (MKL) and imposes lp-mixed-norm regularization instead of l1-mixed-norm regularization. We utilize localization techniques to obtain the sharp learning rate. The bound is characterized by the decay rate of the eigenvalues of the associated kernels. A larger decay rate gives a faster convergence rate. Furthermore, we give the minimax learning rate on the ball characterized by lp-mixed-norm in the product space. Then we show that our derived learning rate of lp-MKL achieves the minimax optimal rate on the lp-mixed-norm ball.

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