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A novel MapReduce Lift association rule mining algorithm (MRLAR) for Big Data

机译:一种新颖的MapReduce提升关联规则挖掘算法(MRLAR)

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摘要

Big Data mining is an analytic process used to dis-cover the hidden knowledge and patterns from a massive, com-plex, and multi-dimensional dataset. Single-processor's memory and CPU resources are very limited, which makes the algorithm performance ineffective. Recently, there has been renewed inter-est in using association rule mining (ARM) in Big Data to uncov-er relationships between what seems to be unrelated. However, the traditional discovery ARM techniques are unable to handle this huge amount of data. Therefore, there is a vital need to scal-able and parallel strategies for ARM based on Big Data ap-proaches. This paper develops a novel MapReduce framework for an association rule algorithm based on Lift interestingness measurement (MRLAR) which can handle massive datasets with a large number of nodes. The experimental result shows the effi-ciency of the proposed algorithm to measure the correlations between itemsets through integrating the uses of MapReduce and LIM instead of depending on confidence.
机译:大数据挖掘是一种分析过程,用于从庞大,复杂和多维的数据集中发现隐藏的知识和模式。单处理器的内存和CPU资源非常有限,这使得算法性能无效。最近,人们开始重新关注使用大数据中的关联规则挖掘(ARM)来发现似乎无关的事物之间的关系。但是,传统的发现ARM技术无法处理如此大量的数据。因此,迫切需要基于大数据方法的ARM的可伸缩和并行策略。本文开发了一种新颖的MapReduce框架,用于基于提升兴趣度测量(MRLAR)的关联规则算法,该框架可以处理具有大量节点的海量数据集。实验结果表明,该算法通过集成MapReduce和LIM的使用而不是依赖于置信度,可以有效地度量项集之间的相关性。

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