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DOMAIN KNOWLEDGE ACQUISITION AND PLAN RECOGNITION BY PROBABILISTIC REASONING

机译:通过概率推理进行领域知识的获取和计划识别

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摘要

This paper introduces a statistical framework for extracting medical domain knowledge from heterogeneous corpora The acquired information is incorporated into a natural language understanding agent and applied to DIKTIS, an existing web-based educational dialogue system for the chemotherapy of nosocomial and community acquired pneumonia, aiming at providing a more intelligent natural language interaction. Unlike the majority of existing dialogue understanding engines, the presented system automatically encodes semantic representation of a user's query using Bayesian networks. The structure of the networks is determined from annotated dialogue corpora using the Bayesian scoring method, thus eliminating the tedious and costly process of manually coding domain knowledge. The conditional probability distributions are estimated during a training phase using data obtained from the same set of dialogue acts. In order to cope with words absent from our restricted dialogue corpus, a separate offline module was incorporated, which estimates their semantic role from both medical and general raw text corpora, correlating them with known lexical-semantically similar words or predefined topics. Lexical similarity is identified on the basis of both contextual similarity and co-occurrence in conjunctive expressions. The evaluation of the platform was performed against the existing language natural understanding module of DIKTIS, the architecture of which is based on manually embedded domain knowledge.
机译:本文介绍了一种从异类语料库中提取医学领域知识的统计框架。将获得的信息整合到自然语言理解代理中,并应用于DIKTIS,DIKTIS是现有的基于网络的医院和社区获得性肺炎化疗的教育对话系统,旨在提供更智能的自然语言交互。与大多数现有的对话理解引擎不同,该系统使用贝叶斯网络自动对用户查询的语义表示进行编码。网络结构是使用贝叶斯评分方法从带注释的对话语料库中确定的,从而消除了手动编码领域知识的繁琐且昂贵的过程。在训练阶段,使用从同一组对话行为中获得的数据来估算条件概率分布。为了应付受限对话语料库中缺少的单词,我们合并了一个单独的离线模块,该模块从医学和一般原始文本语料库中估计其语义作用,并将它们与已知的词汇-语义相似的单词或预定义的主题相关联。词汇相似性是根据上下文相似性和联合表达中的共现来确定的。该平台的评估是根据DIKTIS的现有语言自然理解模块执行的,该模块的体系结构基于手动嵌入的领域知识。

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