使用方差分析的连续数据规则归纳算法

R. Konda, K. Rajurkar
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引用次数: 0

摘要

在构建决策支持系统中,知识获取仍然是一项具有挑战性和耗时的任务。在主流方法中,ID3和C4.5等规则归纳算法被广泛用于从示例中提取规则。这些算法的重点是如何根据信息度量来区分给定的属性,以构建和确定决策树中的节点。特别是,这些算法的主要焦点是如何在决策树过程的每个层次上选择最合适的属性。提出了一种连续数据的规则归纳算法。该算法采用方差分析准则作为信息度量来判别给定属性,构建连续数据的决策树。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A rule induction algorithm for continuous data using analysis of variance
Knowledge acquisition continues to be a challenging and time consuming task in building decision support systems. Among the dominant methods, rule induction algorithms such as ID3 and C4.5 are widely used to extract rules from examples. The thrust of these algorithms is how they discriminate the given attributes based on information measure for building and determining the nodes in the decision tree. In particular, the main focus of these algorithms is on how to select the most appropriate attribute at each level of the decision tree process. This paper proposes an algorithm for rule induction for continuous data. The proposed algorithm uses an analysis of variance criterion for information measure in discriminating the given attributes for building the decision tree for continuous data.
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