Jindi Zhang
2022
Read before Generate! Faithful Long Form Question Answering with Machine Reading
Dan Su
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Xiaoguang Li
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Jindi Zhang
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Lifeng Shang
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Xin Jiang
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Qun Liu
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Pascale Fung
Findings of the Association for Computational Linguistics: ACL 2022
Long-form question answering (LFQA) aims to generate a paragraph-length answer for a given question. While current work on LFQA using large pre-trained model for generation are effective at producing fluent and somewhat relevant content, one primary challenge lies in how to generate a faithful answer that has less hallucinated content. We propose a new end-to-end framework that jointly models answer generation and machine reading. The key idea is to augment the generation model with fine-grained, answer-related salient information which can be viewed as an emphasis on faithful facts. State-of-the-art results on two LFQA datasets, ELI5 and MS MARCO, demonstrate the effectiveness of our method, in comparison with strong baselines on automatic and human evaluation metrics. A detailed analysis further proves the competency of our methods in generating fluent, relevant, and more faithful answers.
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Co-authors
- Dan Su 1
- Lifeng Shang 1
- Pascale Fung 1
- Qun Liu 1
- Xiaoguang Li 1
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