WEN Liang, SHI Haibo, ZHANG Xiaodong, SUN Xin, WEI Xiaochi, WANG Junfeng, CHENG Zhicong, YIN Dawei, WANG Xiaolin, LUO Yingwei, WANG Houfeng. Learning to Combine Answer Boundary Detection and Answer Re-ranking for Phrase-Indexed Question Answering[J]. Chinese Journal of Electronics, 2022, 31(5): 938-948. DOI: 10.1049/cje.2021.00.079
Citation: WEN Liang, SHI Haibo, ZHANG Xiaodong, SUN Xin, WEI Xiaochi, WANG Junfeng, CHENG Zhicong, YIN Dawei, WANG Xiaolin, LUO Yingwei, WANG Houfeng. Learning to Combine Answer Boundary Detection and Answer Re-ranking for Phrase-Indexed Question Answering[J]. Chinese Journal of Electronics, 2022, 31(5): 938-948. DOI: 10.1049/cje.2021.00.079

Learning to Combine Answer Boundary Detection and Answer Re-ranking for Phrase-Indexed Question Answering

  • Phrase-indexed question answering (PIQA) seeks to improve the inference speed of question answering (QA) models by enforcing complete independence of the document encoder from the question encoder, and it shows that the constrained model can achieve significant efficiency at the cost of its accuracy. In this paper, we aim to build a model under the PIQA constraint while reducing its accuracy gap with the unconstrained QA models. We propose a novel framework—AnsDR, which consists of an answer boundary detector (AnsD) and an answer candidate ranker (AnsR). More specifically, AnsD is a QA model under the PIQA architecture and it is designed to identify the rough answer boundaries; and AnsR is a lightweight ranking model to finely re-rank the potential candidates without losing the efficiency. We perform the extensive experiments on public datasets. The experimental results show that the proposed method achieves the state of the art on the PIQA task.
  • loading

Catalog

    /

    DownLoad:  Full-Size Img  PowerPoint
    Return
    Return