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Discovering Knowledge from Medical Databases

机译:从医学数据库中发现知识

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摘要

We investigate new approaches for knowledge discovery from two medical databases. Two different kinds of knowledge, namely rules and causal structures, are learned. Rules capture interesting patterns and regularities in the database. Causal structures represented by Bayesian networks capture the causality relationships among the attributes. We employ advanced evolutionary algorithms for these discovery tasks.In particular, Generic Genetic Programming is employed as rule learning algorithm. Our approach for discovering causality relationships is based on Evolutionary Programming which learns Bayesian network structures.
机译:我们研究了从两个医学数据库中发现知识的新方法。学习了两种不同的知识,即规则和因果结构。规则捕获数据库中有趣的模式和规律。贝叶斯网络表示的因果结构捕获了属性之间的因果关系。对于这些发现任务,我们采用了先进的进化算法,特别是将通用遗传编程作为规则学习算法。我们发现因果关系的方法基于学习贝叶斯网络结构的进化编程。

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