Medical Dialogue Generation (MDG) is intended to build a medical dialogue system for intelligent consultation, which can communicate with patients in real-time, thereby improving the efficiency of clinical diagnosis with broad application prospects. This paper presents our proposed framework for the Chinese MDG organized by the 2021 China conference on knowledge graph and semantic computing (CCKS) competition, which requires generating context-consistent and medically meaningful responses conditioned on the dialogue history. In our framework, we propose a pipeline system composed of entity prediction and entity-aware dialogue generation, by adding predicted entities to the dialogue model with a fusion mechanism, thereby utilizing information from different sources. At the decoding stage, we propose a new decoding mechanism named Entity-revised Diverse Beam Search (EDBS) to improve entity correctness and promote the length and quality of the final response. The proposed method wins both the CCKS and the International Conference on Learning Representations (ICLR) 2021 Workshop Machine Learning for Preventing and Combating Pandemics (MLPCP) Track 1 Entity-aware MED competitions, which demonstrate the practicality and effectiveness of our method.
翻译:本文介绍2021年中国知识图和语义计算(CCKS)竞赛会议组织的中国千年发展目标拟议框架,要求以对话历史为条件,产生符合背景和具有医学意义的反应。在我们的框架内,我们提议建立一个由实体预测和实体认知对话组成的编审系统,在对话模式中增加有聚合机制的预期实体,从而利用不同来源的信息,从而提高临床诊断的效率。在解码阶段,我们提出一个新的解码机制,名为实体-修订多元Bem搜索(EDBS),目的是改进实体的正确性,促进最后反应的长度和质量。拟议方法赢得了CCKS和学习代表国际会议(ICLR) 2021 防止并打击大流行病机械学习讲习班第1轨(MLPCP),显示了我们方法的实用性和有效性。