Mining associations by pattern structure in large relational tables

Haixun Wang, Chang-Shing Perng, Sheng Ma, Philip S. Yu
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引用次数: 5

Abstract

Association rule mining aims at discovering patterns whose support is beyond a given threshold. Mining patterns composed of items described by an arbitrary subset of attributes in a large relational table represents a new challenge and has various practical applications, including the event management systems that motivated this work. The attribute combinations that define the items in a pattern provide the structural information of the pattern. Current association algorithms do not make full use of the structural information of the patterns: the information is either lost after it is encoded with attribute values, or is constrained by a given hierarchy or taxonomy. Pattern structures convey important knowledge about the patterns. We present an architecture that organizes the mining space based on pattern structures. By exploiting the interrelationships among pattern structures, execution times for mining can be reduced significantly. This advantage is demonstrated by our experiments using both synthetic and real-life datasets.
在大型关系表中通过模式结构挖掘关联
关联规则挖掘旨在发现支持度超过给定阈值的模式。挖掘由大型关系表中任意属性子集描述的项组成的模式是一个新的挑战,具有各种实际应用,包括激发这项工作的事件管理系统。定义模式中的项的属性组合提供了模式的结构信息。当前的关联算法没有充分利用模式的结构信息:这些信息要么在用属性值编码之后丢失,要么受到给定层次结构或分类法的约束。模式结构传达了关于模式的重要知识。我们提出了一种基于模式结构组织挖掘空间的体系结构。通过利用模式结构之间的相互关系,可以显著减少挖掘的执行时间。我们使用合成数据集和真实数据集的实验证明了这一优势。
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