首页> 外文会议>2008年拟人系统国际会议(2008 International Conference on Humanized Systems )(ICHS’08)论文集 >A METHOD OF INSTANCE LEARNING BASED ON FINITE-STATE AUTOMATON AND ITS APPLICATION ON TCM MEDICAL CASES
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A METHOD OF INSTANCE LEARNING BASED ON FINITE-STATE AUTOMATON AND ITS APPLICATION ON TCM MEDICAL CASES

机译:基于有限状态自动机的实例化学习方法及其在中医案例中的应用

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In traditional Chinese medicine (TCM) field, medical cases are viewed as semi-structured text, which is between free text and structured text. They lack of grammar, have no strict formats, and even don’t have complete sentences. Most of them consist of phrases having the characteristics of TCM field. Presently, the information in TCM medical cases is extracted based on structured templates. This process requires the experts to take part in. Moreover, each of the experts has their own characteristics. If we use uniform templates to describe the TCM medical cases, they will not only result in the loss of some information, but also not reflect each expert’s idea perfectly. In this paper, a method of instance learning based on finite-state automaton is proposed, after analyzing the characteristics of TCM medical case’s structures. This paper presents a method to automatically generate extraction structure patterns of symptom phrases by instance learning. These structure patterns are expressed by finite-state automaton. By using this method, information can be extracted from TCM medical cases automatically, and the state transition diagram can be used in the traditional Chinese medicine domain to standardize the symptom information phrases. Moreover, information in TCM medical cases is not lost, and each expert’s idea is reflected more perfectly.
机译:在中医(TCM)领域,医疗案例被视为半结构化文本,介于自由文本和结构化文本之间。他们缺乏语法,没有严格的格式,甚至没有完整的句子。它们中的大多数由具有中医领域特征的短语组成。目前,基于结构化模板提取中医病案信息。这个过程需要专家参与。而且,每个专家都有自己的特点。如果我们使用统一的模板来描述中医病案,那么它们不仅会导致某些信息的丢失,而且也无法完美地反映每位专家的想法。在分析了中医病案结构特征的基础上,提出了一种基于有限状态自动机的实例学习方法。本文提出了一种通过实例学习自动生成症状短语提取结构模式的方法。这些结构模式由有限状态自动机表达。通过这种方法,可以自动从中医病案中提取信息,并在中医领域使用状态转换图来规范症状信息短语。此外,中医病案中的信息也不会丢失,并且每个专家的想法都能得到更完美的体现。

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