Local Deep Kernel Learning for Efficient Non-linear SVM Prediction

Jose, C. ; Goyal, P. ; Aggrwal, P. ; Varma, M. (2013) Local Deep Kernel Learning for Efficient Non-linear SVM Prediction In: Proceedings of the 30th International Conference on Machine Learning, 2013, Atlanta, Georgia, USA.

Full text not available from this repository.

Abstract

Our objective is to speed up non-linear SVM prediction while maintaining classification accuracy above an acceptable limit. We generalize Localized Multiple Kernel Learning so as to learn a tree-based primal feature embedding which is high dimensional and sparse. Primal based classification decouples prediction costs from the number of support vectors and our tree-structured features efficiently encode non-linearities while speeding up prediction exponentially over the state-of-the-art. We develop routines for optimizing over the space of tree-structured features and efficiently scale to problems with more than half a million training points. Experiments on benchmark data sets reveal that our formulation can reduce prediction costs by more than three orders of magnitude in some cases with a moderate sacrifice in classification accuracy as compared to RBF-SVMs. Further-more, our formulation leads to better classification accuracies over leading methods.

Item Type:Conference or Workshop Item (Paper)
Source:Copyright of this article belongs to International Conference on Machine Learning.
ID Code:119690
Deposited On:16 Jun 2021 08:44
Last Modified:16 Jun 2021 08:44

Repository Staff Only: item control page