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A Hybrid Interestingness Heuristic Approach for Attribute-Oriented Mining

机译:面向属性的混合兴趣启发式混合方法

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摘要

A hybrid interestingness heuristic algorithm, clusterAOI, is presented that generates a more interesting generalized final table than traditional attribute-oriented induction (AOI). AOI uses a global static threshold to generalize attributes irrespective of attribute features, consequently leading to overgener-alisation. In contrast, clusterAOI uses attribute features such as concept hierarchies and distinct domain attribute values to dynamically recalculate new attribute thresholds for each of the less significant attributes. ClusterAOI then applies new heuristic functions and the Kullback-leibler (K-L) measure to evaluate interestingness for each attribute and then for all attributes by a harmonic aggregation in each generalisation iteration. The dynamic threshold adjustment, aggregation and evaluation of interestingness within each generalization iteration ultimately generates a higher quality final table than traditional AOI. Results from real-world cancer and population datasets show both significantly increased interestingness and better performance compared with AOI.
机译:提出了一种混合兴趣启发式算法clusterAOI,它比传统的面向属性的归纳法(AOI)生成了更有趣的广义最终表。 AOI使用全局静态阈值来概括属性,而与属性特征无关,因此导致过度生成化。相反,clusterAOI使用诸如概念层次结构和不同的域属性值之类的属性功能来动态地重新计算每个次要属性的新属性阈值。然后,ClusterAOI应用新的启发式函数和Kullback-leibler(K-L)度量来评估每个属性的趣味性,然后通过每次泛化迭代中的谐波聚合来评估所有属性的趣味性。每次归纳迭代中的动态阈值调整,聚合和兴趣度评估最终都会产生比传统AOI更高质量的最终表。与AOI相比,来自真实世界的癌症和人群数据集的结果表明,有趣性和性能都有了显着提高。

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