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Multiple kernel learning with data augmentation

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conference contribution
posted on 2024-06-06, 08:55 authored by K Nguyen, T Le, V Nguyen, TD Nguyen, D Phung
© 2016 K. Nguyen, T. Le, V. Nguyen, T.D. Nguyen & D. Phung. The motivations of multiple kernel learning (MKL) approach are to increase kernel expressiveness capacity and to avoid the expensive grid search over a wide spectrum of kernels. A large amount of work has been proposed to improve the MKL in terms of the computational cost and the sparsity of the solution. However, these studies still either require an expensive grid search on the model parameters or scale unsatisfactorily with the numbers of kernels and training samples. In this paper, we address these issues by conjoining MKL, Stochastic Gradient Descent (SGD) framework, and data augmentation technique. The pathway of our proposed method is developed as follows. We first develop a maximum-aposteriori (MAP) view for MKL under a probabilistic setting and described in a graphical model. This view allows us to develop data augmentation technique to make the inference for finding the optimal parameters feasible, as opposed to traditional approach of training MKL via convex optimization techniques. As a result, we can use the standard SGD framework to learn weight matrix and extend the model to support online learning. We validate our method on several benchmark datasets in both batch and online settings. The experimental results show that our proposed method can learn the parameters in a principled way to eliminate the expensive grid search while gaining a significant computational speedup comparing with the state-of-the-art baselines.

History

Volume

63

Pagination

49-64

Location

Hamilton, New Zealand

Open access

  • Yes

Start date

2016-11-16

End date

2016-11-18

ISSN

1532-4435

eISSN

1533-7928

Language

eng

Publication classification

E1 Full written paper - refereed

Copyright notice

2016, K. Nguyen, T. Le, V. Nguyen, T.D. Nguyen & D. Phung

Title of proceedings

ACML 2016 : JMLR: Workshop and Conference Proceedings

Event

Machine Learning. Asian Conference (2016 : Hamilton, New Zealand)

Publisher

MIT Press

Place of publication

Cambridge, Ma.

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