conference paper

Online classification using a voted RDA method

Proceedings of the twenty-eighth aaai conference on artificial intelligence

Publication Date

January 1, 2014

Author(s)

Abstract

We propose a voted dual averaging method for online classification problems with explicit regularization. This method employs the update rule of the regularized dual averaging (RDA) method proposed by Xiao, but only on the subsequence of training examples where a classification error is made. We derive a bound on the number of mistakes made by this method on the training set, as well as its generalization error rate. We also introduce the concept of relative strength of regularization, and show how it affects the mistake bound and generalization performance. We examine the method using l(1)-regularization on a large-scale natural language processing task, and obtained state-of-the-art classification performance with fairly sparse models.

Suggested Citation
Tianbing Xu, Jianfeng Gao, Lin Xiao and Amelia C. Regan (2014) “Online classification using a voted RDA method”, in Proceedings of the twenty-eighth aaai conference on artificial intelligence. ASSOC ADVANCEMENT ARTIFICIAL INTELLIGENCE, pp. 2170–2176.