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An improved itemset generation approach for mining medical databases

机译:用于挖掘医学数据库的改进项集生成方法

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Finding frequent patterns in data mining plays a significant role for finding the relational patterns. In this study an extendable and improved itemset generation approach has been constructed and developed for mining the relationships of the symptoms and disorders in the medical databases. The algorithm of the developed software finds the frequent illnesses and generates association rules using Apriori algorithm. The developed software can be usable for large medical and health databases for constructing association rules for disorders frequently seen in the patient and determining the correlation of the health disorders and symptoms observed simultaneosly.
机译:在数据挖掘中查找频繁模式对于查找关系模式起着重要作用。在这项研究中,已经构建和开发了一种可扩展和改进的项目集生成方法,用于挖掘医学数据库中症状与疾病之间的关系。所开发软件的算法可以发现常见疾病,并使用Apriori算法生成关联规则。所开发的软件可用于大型医学和健康数据库,以为患者中常见的疾病构建关联规则,并确定同时观察到的健康疾病和症状的相关性。

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