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An efficient algorithm for mining top-rank-K frequent patterns from uncertain databases

机译:从不确定数据库中挖掘顶级级别频繁模式的高效算法

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The analysis and management of uncertain data has gained a lot of importance in the past few years because of their importance in a wide variety of applications such as sensor network and privacy preserving data mining applications. Many algorithms have been proposed to mine the frequent pattern over uncertain database. However the existing algorithms for uncertain data generate a large no. of candidate patterns and required to define an appropriate user defined threshold which is a challenging task for users. In this paper, we propose a new algorithm known as UFAE (uncertain filtering and extending) algorithm to mine top-rank-k frequent itemset or patterns. Mining only top-rank-k frequent pattern greatly decrease the number of candidate pattern generated so reduce the mining time. Many algorithms exist to mine top-rank-k frequent itemset in case of precise data but none in case of uncertain database. Experiments are performed to evaluate the performance of the algorithm on various dataset.
机译:过去几年,不确定数据的分析和管理由于他们在各种应用中的重要性,例如传感器网络和隐私保留数据挖掘应用程序。已经提出了许多算法来通过不确定数据库挖掘频繁的模式。然而,现有的不确定数据算法生成大的否。候选模式和所需的是定义适当的用户定义的阈值,这对于用户来说是一个具有挑战性的任务。在本文中,我们提出了一种称为UFAE(不确定滤波和扩展)算法的新算法,以挖掘顶级r频繁的项目集或模式。采矿只有顶级-K频繁模式大大减少了所产生的候选模式的数量,减少了采矿时间。在精确数据的情况下,在挖掘Top-Rank-K频繁项目集中存在许多算法,但在不确定的数据库中没有。进行实验以评估算法对各种数据集的性能。

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