Learning-Based Single-Document Summarization with Compression and Anaphoricity Constraints
Abstract
We present a discriminative model for single-document summarization that integrally combines compression and anaphoricity constraints. Our model selects textual units to include in the summary based on a rich set of sparse features whose weights are learned on a large corpus. We allow for the deletion of content within a sentence when that deletion is licensed by compression rules; in our framework, these are implemented as dependencies between subsentential units of text. Anaphoricity constraints then improve cross-sentence coherence by guaranteeing that, for each pronoun included in the summary, the pronoun's antecedent is included as well or the pronoun is rewritten as a full mention. When trained end-to-end, our final system outperforms prior work on both ROUGE as well as on human judgments of linguistic quality.
Keywords
Cite
@article{arxiv.1603.08887,
title = {Learning-Based Single-Document Summarization with Compression and Anaphoricity Constraints},
author = {Greg Durrett and Taylor Berg-Kirkpatrick and Dan Klein},
journal= {arXiv preprint arXiv:1603.08887},
year = {2016}
}
Comments
ACL 2016