English

Matching-based Term Semantics Pre-training for Spoken Patient Query Understanding

Computation and Language 2023-03-03 v1

Abstract

Medical Slot Filling (MSF) task aims to convert medical queries into structured information, playing an essential role in diagnosis dialogue systems. However, the lack of sufficient term semantics learning makes existing approaches hard to capture semantically identical but colloquial expressions of terms in medical conversations. In this work, we formalize MSF into a matching problem and propose a Term Semantics Pre-trained Matching Network (TSPMN) that takes both terms and queries as input to model their semantic interaction. To learn term semantics better, we further design two self-supervised objectives, including Contrastive Term Discrimination (CTD) and Matching-based Mask Term Modeling (MMTM). CTD determines whether it is the masked term in the dialogue for each given term, while MMTM directly predicts the masked ones. Experimental results on two Chinese benchmarks show that TSPMN outperforms strong baselines, especially in few-shot settings.

Keywords

Cite

@article{arxiv.2303.01341,
  title  = {Matching-based Term Semantics Pre-training for Spoken Patient Query Understanding},
  author = {Zefa Hu and Xiuyi Chen and Haoran Wu and Minglun Han and Ziyi Ni and Jing Shi and Shuang Xu and Bo Xu},
  journal= {arXiv preprint arXiv:2303.01341},
  year   = {2023}
}

Comments

ICASSP 2023

R2 v1 2026-06-28T08:57:24.904Z