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Efficient algorithms for mining constrained frequent patterns from uncertain data

机译:从不确定数据中挖掘受限频繁模式的高效算法

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摘要

Mining of frequent patterns is one of the popular knowledge discovery and data mining (KDD) tasks. It also plays an essential role in the mining of many other patterns such as correlation, sequences, and association rules. Hence, it has been the subject of numerous studies since its introduction. Most of these studies find all the frequent patterns from collection of precise data, in which the items within each datum or transaction are definitely known and precise. However, there are many real-life situations in which the user is interested in only some tiny portions of these frequent patterns. Finding all frequent patterns would then be redundant and waste lots of computation. This calls for constrained mining, which aims to find only those frequent patterns that are interesting to the user. Moreover, there are also many reallife situations in which the data are uncertain. This calls for uncertain data mining. In this paper, we propose an algorithm to efficiently find constrained frequent patterns from collections of uncertain data.
机译:频繁模式的挖掘是流行的知识发现和数据挖掘(KDD)任务之一。它在挖掘许多其他模式(例如相关性,序列和关联规则)中也起着至关重要的作用。因此,自引入以来,它一直是众多研究的主题。这些研究大多数都从精确数据的收集中找到所有常见的模式,其中每个基准或交易中的项目都是已知且精确的。但是,在许多现实生活中,用户只对这些频繁模式的一小部分感兴趣。因此,找到所有频繁的模式将是多余的,并且会浪费大量计算量。这要求进行约束挖掘,目的是仅查找用户感兴趣的那些频繁模式。此外,在许多现实生活中,数据是不确定的。这要求不确定的数据挖掘。在本文中,我们提出了一种算法,可以从不确定数据的集合中有效地找到约束频繁模式。

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