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AUTOMATED KNOWLEDGE DISCOVERY IN CLINICAL DATABASES BASED ON ROUGH SET MODEL

机译:基于粗糙集模型的临床数据库自动知识发现

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摘要

One of the most important problems on rule induction methods is that extracted rules do not plausibly represent information on experts' decision processes, which makes rule interpretation by domain experts difficult. In order to solve this problem, the character- istics of medical reasoning is discussed. Positive and negative rules are introduced which model medical experts' rules. Then, for induction of positive and negative rules, two search algorithms are provided. The proposed rule induction method was evaluated on medical databases, the experimental results of which show that induced rules correctly represented experts' knowledge and several interesting patterns were discovered.
机译:规则归纳方法最重要的问题之一是,提取的规则无法合理地代表专家决策过程中的信息,这使得领域专家难以解释规则。为了解决这个问题,讨论了医学推理的特征。引入了积极和消极的规则,以模仿医学专家的规则。然后,为了推导正负规则,提供了两种搜索算法。在医学数据库上对提出的规则归纳方法进行了评估,实验结果表明,归纳规则正确地代表了专家的知识,并发现了几种有趣的模式。

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