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Diagnosis of Diseases: Classification Rule Discovery from Medical Data using Genetic Algorithm with Suppressor Mutation

机译:疾病的诊断:使用抑制突变的遗传算法从医疗数据发现分类规则发现

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Data mining is a powerful method to extract knowledge from data. Data mining area focused an attractive research challenges on Knowledge Discovery in Databases (KDD), with the aim to discover interesting and useful data from various transactional databases. Association Rule Mining is one of the most well-known techniques for extracting relations among attributes from larger databases which is given in the form of rules to the user. Data mining techniques in medical domain is inevitable in diagnosing various diseases which leads to reduce time and performance, by taking number of tests required for the patients. This paper presents a rule extraction for diabetes disease using genetic algorithm, with a newly proposed genetic operator named suppressor mutation (GA-SM), to suppress the activity of genes which are over expressive in nature i.e. to suppress the useless attributes from the rules. By using this new operator in association rule mining techniques, it generates a smaller number of rules for diagnosing diabetes. Genetic algorithm shows a wonderful performance with suppressor mutation when compared to CN2, J48, BF tree with respect to performance factors.
机译:数据挖掘是一种强大的方法,可以从数据中提取知识。数据挖掘区域的重点是关于数据库(KDD)的知识发现的有吸引力的研究挑战,旨在发现来自各种事务数据库的有趣和有用的数据。关联规则挖掘是用于从向用户的规则形式给出的较大数据库中提取属性之间的关系的最着名的技术之一。在诊断各种疾病时,医学领域的数据挖掘技术是不可避免的,这通过患者所需的测试数量来导致减少时间和性能。本文呈现了使用遗传算法的糖尿病疾病的规则提取,具有名为抑制突变突变(GA-SM)的新提出的遗传算子,以抑制自然中表达的基因的活性,即抑制规则中的无用属性。通过在关联规则挖掘技术中使用此新操作员,它会产生较少数量的诊断糖尿病规则。遗传算法显示与相对于性能因子的CN2,J48,BF树相比,抑制突变具有抑制突变的精彩性能。

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