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Discrete Optimization for Unsupervised Sentence Summarization with Word-Level Extraction

About

Automatic sentence summarization produces a shorter version of a sentence, while preserving its most important information. A good summary is characterized by language fluency and high information overlap with the source sentence. We model these two aspects in an unsupervised objective function, consisting of language modeling and semantic similarity metrics. We search for a high-scoring summary by discrete optimization. Our proposed method achieves a new state-of-the art for unsupervised sentence summarization according to ROUGE scores. Additionally, we demonstrate that the commonly reported ROUGE F1 metric is sensitive to summary length. Since this is unwillingly exploited in recent work, we emphasize that future evaluation should explicitly group summarization systems by output length brackets.

Raphael Schumann, Lili Mou, Yao Lu, Olga Vechtomova, Katja Markert• 2020

Related benchmarks

TaskDatasetResultRank
Text SummarizationDUC 2004 (test)
ROUGE-126.14
115
Text SummarizationGigaword (test)
ROUGE-124.98
75
Sentence CompressionGoogle
F1 Score63.7
7
Sentence CompressionDUC 2004
ROUGE-1 Recall27.41
6
Sentence CompressionGigaword
ROUGE-1 F128.8
6
Sentence CompressionBroadcast
F1 Score0.792
4
Sentence CompressionBNC
Overall F10.768
4
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