A Survey Paper on a Compact Data Structure Based Technique for Mining Frequent Closed Item Set

Kamlesh Ahuja, D. Mishra, Sarika Jain
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Abstract

Association discovery finds closely correlate sets so the presence of some components in an exceedingly frequent set can imply the presence of the remaining components (in identical set). Closed item sets are a solution to the problems described above. These are obtained by partitioning the lattice of frequent item sets into equivalence classes according to the following property: two distinct item sets belong the same class if and only if they occur in the same set of transactions. Closed item sets are the collection of maximal item sets of these equivalence classes. This paper proposes a comprehensive survey of the closed item set mining. The concept of the frequent closed item set mining is also elaborated in detail. The modern methods of frequent closed item set mining are also discussed in brief.
基于紧凑数据结构的频繁封闭项集挖掘技术综述
关联发现查找密切相关的集合,因此在一个非常频繁的集合中出现某些组件可能意味着(在相同的集合中)存在其余组件。封闭项目集是上述问题的解决方案。这是通过将频繁项目集的格划分为等价类而得到的:当且仅当两个不同的项目集出现在同一交易集中时,它们属于同一类。闭项集是这些等价类的最大项集的集合。本文对封闭项集挖掘进行了全面的综述。详细阐述了频繁封闭项集挖掘的概念。本文还简要讨论了频繁闭项集挖掘的现代方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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