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Improving associative classification by incorporating novel interestingness measures

机译:通过引入新颖的趣味性测度来改善关联分类

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摘要

Associative classification has aroused significant attention in recent years and proved to generate good results in previous research efforts. This paper aims to contribute to this line of research by the development of more effective associative classifiers. Our goal is to achieve this by the incorporation of two novel interesting measures, i.e. intensity of implication and dilated chi-square, into an existing associative classification algorithm, respectively. The former interesting measure was merely proposed with the purpose of mining meaningful association rules, while the latter was designed to reveal the interdependence between condition and class variables. Each of these two measures is applied as the primary sorting criterion within the context of the well-known CBA algorithm in an attempt to organize the composition of the rule sets in a more reasonable sequence. Benchmarking experiments on 16 popular UCI datasets revealed that our algorithms could empirically generate accurate and significantly more compact decision lists. In addition to this, the algorithm was validated on a separate credit scoring dataset, which contained 7190 credit scoring samples.
机译:近年来,关联分类引起了广泛的关注,并在先前的研究工作中被证明能产生良好的结果。本文旨在通过开发更有效的关联分类器为这一研究领域做出贡献。我们的目标是通过将两种新颖有趣的度量(即蕴含强度和扩张卡方)分别结合到现有的关联分类算法中来实现。前一种有趣的度量只是出于挖掘有意义的关联规则的目的而提出的,而后一种则旨在揭示条件和类变量之间的相互依赖性。在众所周知的CBA算法的上下文中,将这两种方法中的每一种用作主要排序标准,以尝试以更合理的顺序组织规则集的组成。在16个流行的UCI数据集上进行的基准测试表明,我们的算法可以凭经验生成准确且明显更紧凑的决策列表。除此之外,该算法在单独的信用评分数据集中进行了验证,该数据集包含7190个信用评分样本。

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