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Enhancing Factual Consistency of Abstractive Summarization (2003.08612v8)
Published 19 Mar 2020 in cs.CL
Abstract: Automatic abstractive summaries are found to often distort or fabricate facts in the article. This inconsistency between summary and original text has seriously impacted its applicability. We propose a fact-aware summarization model FASum to extract and integrate factual relations into the summary generation process via graph attention. We then design a factual corrector model FC to automatically correct factual errors from summaries generated by existing systems. Empirical results show that the fact-aware summarization can produce abstractive summaries with higher factual consistency compared with existing systems, and the correction model improves the factual consistency of given summaries via modifying only a few keywords.
- Chenguang Zhu (100 papers)
- William Hinthorn (3 papers)
- Ruochen Xu (35 papers)
- Qingkai Zeng (28 papers)
- Michael Zeng (76 papers)
- Xuedong Huang (22 papers)
- Meng Jiang (126 papers)