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OrderSum: Semantic Sentence Ordering for Extractive Summarization

22 February 2025
Taewan Kwon
Sangyong Lee
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Abstract

There are two main approaches to recent extractive summarization: the sentence-level framework, which selects sentences to include in a summary individually, and the summary-level framework, which generates multiple candidate summaries and ranks them. Previous work in both frameworks has primarily focused on improving which sentences in a document should be included in the summary. However, the sentence order of extractive summaries, which is critical for the quality of a summary, remains underexplored. In this paper, we introduce OrderSum, a novel extractive summarization model that semantically orders sentences within an extractive summary. OrderSum proposes a new representation method to incorporate the sentence order into the embedding of the extractive summary, and an objective function to train the model to identify which extractive summary has a better sentence order in the semantic space. Extensive experimental results demonstrate that OrderSum obtains state-of-the-art performance in both sentence inclusion and sentence order for extractive summarization. In particular, OrderSum achieves a ROUGE-L score of 30.52 on CNN/DailyMail, outperforming the previous state-of-the-art model by a large margin of 2.54.

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@article{kwon2025_2502.16180,
  title={ OrderSum: Semantic Sentence Ordering for Extractive Summarization },
  author={ Taewan Kwon and Sangyong Lee },
  journal={arXiv preprint arXiv:2502.16180},
  year={ 2025 }
}
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