Bootstrapping Lexical Choice via Multiple-Sequence Alignment
Abstract
An important component of any generation system is the mapping dictionary, a lexicon of elementary semantic expressions and corresponding natural language realizations. Typically, labor-intensive knowledge-based methods are used to construct the dictionary. We instead propose to acquire it automatically via a novel multiple-pass algorithm employing multiple-sequence alignment, a technique commonly used in bioinformatics. Crucially, our method leverages latent information contained in multi-parallel corpora -- datasets that supply several verbalizations of the corresponding semantics rather than just one. We used our techniques to generate natural language versions of computer-generated mathematical proofs, with good results on both a per-component and overall-output basis. For example, in evaluations involving a dozen human judges, our system produced output whose readability and faithfulness to the semantic input rivaled that of a traditional generation system.
Cite
@article{arxiv.cs/0205065,
title = {Bootstrapping Lexical Choice via Multiple-Sequence Alignment},
author = {Regina Barzilay and Lillian Lee},
journal= {arXiv preprint arXiv:cs/0205065},
year = {2007}
}
Comments
8 pages; to appear in the proceedings of EMNLP-2002