Dialogue Act Tagging with Transformation-Based Learning
摘要
For the task of recognizing dialogue acts, we are applying the Transformation-Based Learning (TBL) machine learning algorithm. To circumvent a sparse data problem, we extract values of well-motivated features of utterances, such as speaker direction, punctuation marks, and a new feature, called dialogue act cues, which we find to be more effective than cue phrases and word n-grams in practice. We present strategies for constructing a set of dialogue act cues automatically by minimizing the entropy of the distribution of dialogue acts in a training corpus, filtering out irrelevant dialogue act cues, and clustering semantically-related words. In addition, to address limitations of TBL, we introduce a Monte Carlo strategy for training efficiently and a committee method for computing confidence measures. These ideas are combined in our working implementation, which labels held-out data as accurately as any other reported system for the dialogue act tagging task.
引用
@article{arxiv.cmp-lg/9806006,
title = {Dialogue Act Tagging with Transformation-Based Learning},
author = {Ken Samuel and Sandra Carberry and K. Vijay-Shanker},
journal= {arXiv preprint arXiv:cmp-lg/9806006},
year = {2007}
}
备注
7 pages, no Postscript figures, uses colacl.sty and acl.bst