The Use of Classifiers in Sequential Inference
Machine Learning
2007-05-23 v1 Computation and Language
Abstract
We study the problem of combining the outcomes of several different classifiers in a way that provides a coherent inference that satisfies some constraints. In particular, we develop two general approaches for an important subproblem-identifying phrase structure. The first is a Markovian approach that extends standard HMMs to allow the use of a rich observation structure and of general classifiers to model state-observation dependencies. The second is an extension of constraint satisfaction formalisms. We develop efficient combination algorithms under both models and study them experimentally in the context of shallow parsing.
Cite
@article{arxiv.cs/0111003,
title = {The Use of Classifiers in Sequential Inference},
author = {Vasin Punyakanok and Dan Roth},
journal= {arXiv preprint arXiv:cs/0111003},
year = {2007}
}
Comments
7 pages, 1 figure