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A hybrid heuristic approach for attribute-oriented mining

机译:面向属性挖掘的混合启发式方法

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摘要

We present a hybrid heuristic algorithm, clusterAOl, that generates a more interesting generalised table than obtained via attribute-oriented induction (AOI). AOI tends to overgeneralise as it uses a fixed global static threshold to cluster and generalise attributes irrespective of their features, and does not evaluate intermediate interest-ingness. In contrast, clusterAOl uses attribute features to dynamically recalculate new attribute thresholds and applies heuristics to evaluate cluster quality and intermediate interestingness. Experimental results show improved interestingness, better output pattern distribution and expressiveness, and improved runtime.
机译:我们提出了一种混合启发式算法clusterAO1,它生成比通过面向属性的归纳(AOI)获得的表更有趣的通用表。 AOI倾向于过度概括,因为它使用固定的全局静态阈值来对属性进行聚类和泛化,而不考虑其特征,并且不评估中间兴趣度。相反,clusterAO1使用属性特征来动态地重新计算新的属性阈值,并应用试探法来评估集群质量和中间兴趣度。实验结果表明,改进了趣味性,改善了输出模式的分布和表现力,并改善了运行时间。

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