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    Towards Improving Faithfulness in Abstractive Summarization

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    Name:
    2210.01877.pdf
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    Format:
    PDF
    Description:
    Preprint
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    Type
    Preprint
    Authors
    Chen, Xiuying
    Li, Mingzhe
    Gao, Xin cc
    Zhang, Xiangliang cc
    KAUST Department
    Computational Bioscience Research Center (CBRC)
    Computer Science Program
    Computer, Electrical and Mathematical Science and Engineering (CEMSE) Division
    Machine Intelligence & kNowledge Engineering Lab
    Structural and Functional Bioinformatics Group
    KAUST Grant Number
    BAS/1/1635-01-01
    FCC/1/1976-44-01
    FCC/1/1976-45-01
    URF/1/4663-01-01
    Date
    2022-10-04
    Permanent link to this record
    http://hdl.handle.net/10754/682326
    
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    Abstract
    Despite the success achieved in neural abstractive summarization based on pre-trained language models, one unresolved issue is that the generated summaries are not always faithful to the input document. There are two possible causes of the unfaithfulness problem: (1) the summarization model fails to understand or capture the gist of the input text, and (2) the model over-relies on the language model to generate fluent but inadequate words. In this work, we propose a Faithfulness Enhanced Summarization model (FES), which is designed for addressing these two problems and improving faithfulness in abstractive summarization. For the first problem, we propose to use question-answering (QA) to examine whether the encoder fully grasps the input document and can answer the questions on the key information in the input. The QA attention on the proper input words can also be used to stipulate how the decoder should attend to the source. For the second problem, we introduce a max-margin loss defined on the difference between the language and the summarization model, aiming to prevent the overconfidence of the language model. Extensive experiments on two benchmark summarization datasets, CNN/DM and XSum, demonstrate that our model significantly outperforms strong baselines. The evaluation of factual consistency also shows that our model generates more faithful summaries than baselines.
    Sponsors
    We would like to thank the anonymous reviewers for their constructive comments. This publication is based upon work supported by the King Abdullah University of Science and Technology (KAUST) Office of Research Administration (ORA) under Award No FCC/1/1976-44-01, FCC/1/1976-45-01, URF/1/4663-01-01, and BAS/1/1635-01-01. This work was also supported by Alibaba Group through Alibaba Research Intern Program.
    Publisher
    arXiv
    arXiv
    2210.01877
    Additional Links
    https://arxiv.org/pdf/2210.01877.pdf
    Collections
    Preprints; Structural and Functional Bioinformatics Group; Computer Science Program; Computational Bioscience Research Center (CBRC); Computer, Electrical and Mathematical Science and Engineering (CEMSE) Division

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