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 [BibTeX] [Marc21]
Online-Batch Strongly Convex Multi Kernel Learning
Type of publication: Conference paper
Citation: Orabona_CVPR_2010
Booktitle: Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition
Year: 2010
Month: 6
Abstract: Several object categorization algorithms use kernel methods over multiple cues, as they offer a principled ap- proach to combine multiple cues, and to obtain state-of-the- art performance. A general drawback of these strategies is the high computational cost during training, that prevents their application to large-scale problems. They also do not provide theoretical guarantees on their convergence rate. Here we present a Multiclass Multi Kernel Learning (MKL) algorithm that obtains state-of-the-art performance in a considerably lower training time. We generalize the standard MKL formulation to introduce a parameter that al- lows us to decide the level of sparsity of the solution. Thanks to this new setting, we can directly solve the problem in the primal formulation. We prove theoretically and experimen- tally that 1) our algorithm has a faster convergence rate as the number of kernels grow; 2) the training complexity is linear in the number of training examples; 3) very few iter- ations are enough to reach good solutions. Experiments on three standard benchmark databases support our claims.
Projects Idiap
Authors Orabona, Francesco
Luo, Jie
Caputo, Barbara
Crossref by Orabona_Idiap-RR-07-2010
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Total mark: 0
  • Orabona_CVPR_2010.pdf