Efficient Multiclass Implementations of L1-Regularized Maximum Entropy
Abstract
This paper discusses the application of L1-regularized maximum entropy modeling or SL1-Max [9] to multiclass categorization problems. A new modification to the SL1-Max fast sequential learning algorithm is proposed to handle conditional distributions. Furthermore, unlike most previous studies, the present research goes beyond a single type of conditional distribution. It describes and compares a variety of modeling assumptions about the class distribution (independent or exclusive) and various types of joint or conditional distributions. It results in a new methodology for combining binary regularized classifiers to achieve multiclass categorization. In this context, Maximum Entropy can be considered as a generic and efficient regularized classification tool that matches or outperforms the state-of-the art represented by AdaBoost and SVMs.
Cite
@article{arxiv.cs/0506101,
title = {Efficient Multiclass Implementations of L1-Regularized Maximum Entropy},
author = {Patrick Haffner and Steven Phillips and Rob Schapire},
journal= {arXiv preprint arXiv:cs/0506101},
year = {2007}
}
Comments
13 pages, describes new conditional maxent algorithm, to be submitted