使用MapReduce高效频繁项集挖掘的HDFS框架

Prajakta G. Kulkarni, S. Khonde
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引用次数: 2

摘要

关联规则挖掘是一种非常重要的数据挖掘技术。信息的巨大发展需要更强的计算能力。为了解决这个问题,研究挖掘算法的执行是很重要的。在众多的信息挖掘应用中,频繁项集的找出是一个至关重要的问题。目前有许多算法用于提取频繁项集,如Apriori和FP-Growth。但是这些算法在大型集群或大数据上缺乏并行化、负载平衡、数据分布和容错等特性。本文介绍了一种改进的Apriori方法,该方法使映射器和约简器同时工作。该方法使用三个MapReduce来计算频繁项集。第三个MapReduce用于分解项目集并给出最终结果。本文提出了一种新的方案或算法,利用改进的Apriori算法来减少海量数据库的执行时间,并在节点数量上高效地工作。
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HDFS framework for efficient frequent itemset mining using MapReduce
Association rule mining is a very essential data mining technique in different fields. The enormous development of the information needs increased computational power. To address this issue, it is important to study executions of mining algorithms. To find out the frequent itemsets is an essential and vital issue in numerous information mining applications. There are many algorithms present to extract frequent itemsets like Apriori and FP-Growth. But these algorithms lack properties like parallelization, load balancing, data distribution, and fault tolerance on large clusters or big data. A Modified Apriori method is introduced here in which, the mappers and reducers will work simultaneously. This method uses three MapReduce to calculate frequent itemset. The third MapReduce is used to decompose itemsets and gives the final result. In this paper a new scheme or algorithm is proposed that will reduce the execution time for the massive database and works efficiently on number of nodes by using Modified Apriori algorithm.
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