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ABCD: A Graph Framework to Convert Complex Sentences to a Covering Set of Simple Sentences

Authors :
Gao, Yanjun
Huang, Ting-hao
Passonneau, Rebecca J.
Publication Year :
2021

Abstract

Atomic clauses are fundamental text units for understanding complex sentences. Identifying the atomic sentences within complex sentences is important for applications such as summarization, argument mining, discourse analysis, discourse parsing, and question answering. Previous work mainly relies on rule-based methods dependent on parsing. We propose a new task to decompose each complex sentence into simple sentences derived from the tensed clauses in the source, and a novel problem formulation as a graph edit task. Our neural model learns to Accept, Break, Copy or Drop elements of a graph that combines word adjacency and grammatical dependencies. The full processing pipeline includes modules for graph construction, graph editing, and sentence generation from the output graph. We introduce DeSSE, a new dataset designed to train and evaluate complex sentence decomposition, and MinWiki, a subset of MinWikiSplit. ABCD achieves comparable performance as two parsing baselines on MinWiki. On DeSSE, which has a more even balance of complex sentence types, our model achieves higher accuracy on the number of atomic sentences than an encoder-decoder baseline. Results include a detailed error analysis.<br />Comment: To appear in the proceeding of 59th Annual Meeting of the Association for Computational Linguistics (ACL 2021) Main Conference

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2106.12027
Document Type :
Working Paper