Rule extraction based on rough set theory combined with genetic programming and its application to medical data analysis

Y. Hassan, E. Tazaki
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引用次数: 8

Abstract

A methodology for using rough sets for preference modeling in decision problems is presented in this paper, where we introduce a new approach for deriving knowledge rules from medical databases based on rough sets combined with genetic programming. Genetic programming is one of the newest techniques in applications of artificial intelligence. Rough set theory (Z. Pawluk, 1982), is nowadays rapidly developing branch of artificial intelligence and soft computing. At first glance, the two methodologies have nothing in common. Rough sets construct the representation of knowledge in terms of attributes, semantic decision rules, etc. On the other hand, genetic programming attempts to automatically create computer programs from a high-level statement of the problem requirements. However, in spite of these differences, it is interesting to try to incorporate both approaches into a combined system. The challenge is to get as much as possible from this association.
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基于粗糙集理论和遗传规划的规则提取及其在医疗数据分析中的应用
本文提出了一种将粗糙集用于决策问题偏好建模的方法,提出了一种基于粗糙集和遗传规划相结合的从医学数据库中导出知识规则的新方法。遗传规划是人工智能应用的最新技术之一。粗糙集理论(Z. Pawluk, 1982)是当今人工智能和软计算领域发展迅速的一个分支。乍一看,这两种方法没有任何共同之处。粗糙集从属性、语义决策规则等方面构造知识的表示。另一方面,遗传编程试图从问题需求的高级声明中自动创建计算机程序。然而,尽管存在这些差异,尝试将这两种方法合并到一个组合系统中还是很有趣的。我们面临的挑战是要从这种联系中获得尽可能多的东西。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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