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A Depth Evidence Score Fusion Algorithm for Chinese Medical Intelligence Question Answering System

机译:中国医学智能问答系统的深度证据分数融合算法

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摘要

Question answering (QA) system is becoming the focus of the research in medical health in terms of providing fleetly accurate answers to users. Numerous traditional QA systems are faced to simple factual questions and do not obtain accurate answers for complex questions. In order to realize the intelligent QA system for disease diagnosis and treatment in medical informationization, in this paper, we propose a depth evidence score fusion algorithm for Chinese Medical Intelligent Question Answering System, which can measure the text information in many algorithmic ways and ensure that the QA system outputs accurately the optimal candidate answer. At the semantic level, a new text semantic evidence score based on Word2vec is proposed, which can calculate the semantic similarity between texts. Experimental results on the medical text corpus show that the depth evidence score fusion algorithm has better performance in the evidence-scoring module of the intelligent QA system.
机译:在为用户提供快速准确的答案方面,问答系统(QA)成为医学健康研究的重点。许多传统的质量检查系统都面临简单的事实问题,无法获得复杂问题的准确答案。为了实现医学信息化中疾病诊断和治疗的智能QA系统,本文提出了一种针对中医智能问答系统的深度证据评分融合算法,该算法可以通过多种算法来测量文本信息,并确保质量检查系统会准确输出最佳候选答案。在语义层次上,提出了一种新的基于Word2vec的文本语义证据评分,可以计算文本之间的语义相似度。医学文本语料库的实验结果表明,深度证据评分融合算法在智能QA系统的证据评分模块中具有更好的性能。

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