Improving medical rule-based expert systems comprehensibility: fuzzy association rule mining approach

O. Oladipupo, C. Uwadia, C. Ayo
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引用次数: 4

Abstract

In this paper, a Fuzzy Association Rule Mining (FARM) with expert-driven approach is proposed to acquire a knowledge-base, which corresponds more intuitively to human perception with a high comprehensibility. This approach reduces the number of rules in the knowledge-base when compared with the Standard Rule-base Formulation (SRF) and makes possible the rating of the rules according to their relevance. The rule relevance is determined by the measures of significance and certainty factors. The approach is validated using a medical database and the result shows that this approach ultimately reduces the number of rules and enhances the comprehensibility of the expert system.
提高基于医疗规则的专家系统的可理解性:模糊关联规则挖掘方法
本文提出了一种专家驱动的模糊关联规则挖掘(FARM)方法,以获取更直观地符合人类感知的知识库,并具有较高的可理解性。与标准规则库公式(SRF)相比,该方法减少了知识库中的规则数量,并使根据规则的相关性对规则进行评级成为可能。规则的相关性由显著性和确定性因素的度量决定。通过一个医学数据库对该方法进行了验证,结果表明该方法最终减少了规则的数量,提高了专家系统的可理解性。
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