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Enriching and Controlling Global Semantics for Text Summarization

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Recently, Transformer-based models have been proven effective in the abstractive summarization task by creating fluent and informative summaries. Nevertheless, these models still suffer from the short-range dependency problem, causing them to produce summaries that miss the key points of document. In this paper, we attempt to address this issue by introducing a neural topic model empowered with normalizing flow to capture the global semantics of the document, which are then integrated into the summarization model. In addition, to avoid the overwhelming effect of global semantics on contextualized representation, we introduce a mechanism to control the amount of global semantics supplied to the text generation module. Our method outperforms state-of-the-art summarization models on five common text summarization datasets, namely CNN/DailyMail, XSum, Reddit TIFU, arXiv, and PubMed.

Thong Nguyen, Anh Tuan Luu, Truc Lu, Tho Quan• 2021

Related benchmarks

TaskDatasetResultRank
SummarizationXSum (test)
ROUGE-225.08
276
SummarizationPubMed (test)
ROUGE-145.99
114
Text SummarizationCNN/Daily Mail (test)
ROUGE-221.95
77
SummarizationReddit TIFU (test)
ROUGE-20.0943
7
Text SummarizationarXiv
ROUGE-144.53
6
Topic ModelingCNN/DailyMail
Topic Coherence (CV)53.25
4
Topic ModelingXsum
CV Topic Coherence Score53.09
4
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