Inducing decision rules: a granular computing approach

Xiaosheng Wang
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引用次数: 2

Abstract

Inducing rules is one of the key methods of discovering information hidden in data. In this paper, a method is proposed for inducing decision rules and decision algorithms by a granular computing approach, based on a decision logic language in information tables. And we prove that in consistent information tables, the induced decision algorithms are consistent and complete, and the decision algorithms induced by different partitions are equivalent. Secondly, this paper studies two specific kinds of partitions: partitions inducing atomic decision algorithms and partitions inducing the most general decision algorithms. An algorithm is given for finding the partitions inducing atomic decision algorithms which are also very close to the partitions inducing the most general decision algorithms. The partitions obtained using this algorithm can induce the decision rules which are all atomic, and whose number will be close to the lowest possible. This is then a solution to the problem of finding the simplest decision rules and algorithms.
诱导决策规则:一种颗粒计算方法
归纳规则是发现数据中隐藏信息的关键方法之一。本文提出了一种基于信息表中的决策逻辑语言,利用颗粒计算方法归纳决策规则和决策算法的方法。并证明了在一致信息表中,导出的决策算法是一致的、完备的,不同分区导出的决策算法是等价的。其次,本文研究了两种具体的分区:分区诱导原子决策算法和分区诱导最一般决策算法。给出了一种寻找划分原子决策算法的算法,这种算法也非常接近于划分原子决策算法。利用该算法得到的分区可以归纳出所有原子性的决策规则,这些决策规则的数目将接近于尽可能少。这就是寻找最简单的决策规则和算法问题的解决方案。
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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