CLApr 19, 2020

Extractive Summarization as Text Matching

arXiv:2004.08795v11099 citationsHas Code
AI Analysis

This work addresses the challenge of improving extractive summarization for natural language processing applications, representing a new paradigm rather than an incremental advance.

The paper tackles extractive summarization by reformulating it as a semantic text matching problem between source documents and candidate summaries, achieving a state-of-the-art ROUGE-1 score of 44.41 on CNN/DailyMail.

This paper creates a paradigm shift with regard to the way we build neural extractive summarization systems. Instead of following the commonly used framework of extracting sentences individually and modeling the relationship between sentences, we formulate the extractive summarization task as a semantic text matching problem, in which a source document and candidate summaries will be (extracted from the original text) matched in a semantic space. Notably, this paradigm shift to semantic matching framework is well-grounded in our comprehensive analysis of the inherent gap between sentence-level and summary-level extractors based on the property of the dataset. Besides, even instantiating the framework with a simple form of a matching model, we have driven the state-of-the-art extractive result on CNN/DailyMail to a new level (44.41 in ROUGE-1). Experiments on the other five datasets also show the effectiveness of the matching framework. We believe the power of this matching-based summarization framework has not been fully exploited. To encourage more instantiations in the future, we have released our codes, processed dataset, as well as generated summaries in https://github.com/maszhongming/MatchSum.

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