Using multi-attribute predicates for mining classification rules

Ming-Syan Chen
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引用次数: 9

Abstract

In order to improve the efficiency of deriving classification rules from a large training dataset, we develop in this paper a two-phase method for multi-attribute extraction. A feature that is useful in inferring the group identity of a data tuple is said to have a good inference power to that group identity. Given a large training set of data tuples, the first phase, referred to as feature extraction phase, is applied to a subset of the training database with the purpose of identifying useful features which have good inference powers to group identities. In the second phase, referred to as feature combination phase, these extracted features are evaluated together and multi-attribute predicates with strong inference powers are identified. A technique on using match index of attributes is devised to reduce the processing cost.
使用多属性谓词挖掘分类规则
为了提高从大型训练数据集中提取分类规则的效率,本文提出了一种多属性提取的两阶段方法。在推断数据元组的组标识时有用的特性被称为对该组标识具有良好的推断能力。给定一个大的数据元组训练集,第一阶段称为特征提取阶段,用于训练数据库的一个子集,目的是识别对组身份具有良好推理能力的有用特征。在第二阶段,称为特征组合阶段,将这些提取的特征一起评估,并识别具有强推理能力的多属性谓词。提出了一种利用属性匹配索引来降低处理成本的方法。
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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