A new rule pruning text categorisation method

F. Thabtah, W. Hadi, H. Abu-Mansour, L. Mccluskey
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引用次数: 5

Abstract

Associative classification integrates association rule and classification in data mining to build classifiers that are highly accurate than that of traditional classification approaches such as greedy and decision tree. However, the size of the classifiers produced by associative classification algorithms is usually large and contains insignificant rules. This may degrade the classification accuracy and increases the classification time, thus, pruning becomes an important task. In this paper, we investigate the problem of rule pruning in text categorisation and propose a new rule pruning techniques called High Precedence. Experimental results show that HP derives higher quality and more scalable classifiers than those produced by current pruning methods (lazy and database coverage). In addition, the number of rules generated by the developed pruning procedure is often less than that of lazy pruning.
一种新的规则修剪文本分类方法
关联分类将数据挖掘中的关联规则和分类技术相结合,构建出比贪婪和决策树等传统分类方法准确率更高的分类器。然而,由关联分类算法产生的分类器通常很大,并且包含无关紧要的规则。这可能会降低分类精度,增加分类时间,因此,修剪成为一项重要的任务。本文研究了文本分类中的规则修剪问题,提出了一种新的规则修剪技术——高优先级规则修剪技术。实验结果表明,与当前的修剪方法(懒惰和数据库覆盖)相比,HP得到的分类器质量更高,可扩展性更强。此外,所开发的剪枝过程生成的规则数量通常少于惰性剪枝。
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