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An entropy-based evaluation method for knowledge bases of medical information systems

机译:基于熵的医学信息系统知识库评估方法

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In this paper we introduce a method to develop knowledge bases for medical decision support systems, with a focus on evaluating such knowledge bases. Departing from earlier efforts with concept maps, we developed an ontological-semantic knowledge base and evaluated its information content using the metrics we have developed, and then compared the results to the UMLS backbone knowledge base. The evaluation method developed uses information entropy of concepts, but in contrast to previous approaches normalizes it against the number of relations to evaluate the information density of knowledge bases of varying sizes. A detailed description of the knowledge base development and evaluation is discussed using the underlying algorithms, and the results of experimentation of the methods are explained. The main evaluation results show that the normalized metric provides a balanced method for assessment and that our knowledge base is strong, despite having fewer relationships, is more information-dense, and hence more useful. The key contributions in the area of developing expert systems detailed in this paper include: (a) introduction of a normalized entropy-based evaluation technique to evaluate knowledge bases using graph theory, (b) results of the experimentation of the use of this technique on existing knowledge bases. (C) 2015 Elsevier Ltd. All rights reserved.
机译:在本文中,我们介绍了一种开发医疗决策支持系统知识库的方法,重点是评估此类知识库。与早期使用概念图所做的努力不同,我们开发了本体语义知识库,并使用我们开发的指标评估了其信息内容,然后将结果与UMLS主干知识库进行了比较。开发的评估方法使用概念的信息熵,但是与以前的方法相反,它根据关系数对其进行归一化,以评估各种规模的知识库的信息密度。使用基础算法讨论了知识库开发和评估的详细说明,并说明了该方法的实验结果。主要评估结果表明,归一化度量标准提供了一种平衡的评估方法,并且尽管关系较少,但我们的知识库仍然很牢固,信息密集度更高,因此更加有用。本文详细介绍的开发专家系统方面的主要贡献包括:(a)引入基于归一化的基于熵的评估技术,以使用图论评估知识库;(b)使用该技术的实验结果现有的知识库。 (C)2015 Elsevier Ltd.保留所有权利。

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