A Maximum Entropy Approach to Identifying Sentence Boundaries
cmp-lg
2008-02-03 v1 计算与语言
摘要
We present a trainable model for identifying sentence boundaries in raw text. Given a corpus annotated with sentence boundaries, our model learns to classify each occurrence of ., ?, and ! as either a valid or invalid sentence boundary. The training procedure requires no hand-crafted rules, lexica, part-of-speech tags, or domain-specific information. The model can therefore be trained easily on any genre of English, and should be trainable on any other Roman-alphabet language. Performance is comparable to or better than the performance of similar systems, but we emphasize the simplicity of retraining for new domains.
引用
@article{arxiv.cmp-lg/9704002,
title = {A Maximum Entropy Approach to Identifying Sentence Boundaries},
author = {Jeffrey C. Reynar and Adwait Ratnaparkhi},
journal= {arXiv preprint arXiv:cmp-lg/9704002},
year = {2008}
}
备注
4 pages, uses aclap.sty and covingtn.sty