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A FUZZY-MINING APPROACH FOR SOLVING RULE BASED EXPERT SYSTEM UNWIELDINESS IN MEDICAL DOMAIN

机译:一种解决基于规则的医学领域专家系统模糊化的方法

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Over the years, one of the challenges of a rule based expert system is the possibility of evolving a compact and consistent knowledge-base with a fewer numbers of rules that are relevant to the application domain, in order to enhance the comprehensibility of the expert system. In this paper, the hybrid of fuzzy rule mining interestingness measures and fuzzy expert system is exploited as a means of solving the problem of unwieldiness and maintenance complication in the rule based expert system. This negatively increases the knowledge-base space complexity and reduces rule access rate which impedes system response time. To validate this concept, the Coronary Heart Disease risk ratio determination is used as the case study. Results of fuzzy expert system with a fewer numbers of rules and fuzzy expert system with a large numbers of rules are presented for comparison. Moreover, the effect of fuzzy linguistic variable risk ratio is investigated. This makes the expert system recommendation close to human perception.
机译:多年来,基于规则的专家系统的挑战之一是可能发展出紧凑且一致的知识库,并减少与应用程序领域相关的规则数量,以增强专家系统的可理解性。本文将模糊规则挖掘趣味性测度与模糊专家系统相结合,作为解决基于规则的专家系统中繁琐,维护复杂的问题。这不利地增加了知识库空间的复杂性并降低了规则访问速率,从而阻碍了系统响应时间。为了验证这一概念,将冠心病风险比确定用作案例研究。提出了具有较少规则的模糊专家系统和具有大量规则的模糊专家系统的结果进行比较。此外,研究了模糊语言可变风险比的影响。这使得专家系统的建议接近于人类的感知。

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