pcApriori: scalable apriori for multiprocessor systems

B. Schlegel, Tim Kiefer, T. Kissinger, Wolfgang Lehner
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引用次数: 5

Abstract

Frequent-itemset mining is an important part of data mining. It is a computational and memory intensive task and has a large number of scientific and statistical application areas. In many of them, the datasets can easily grow up to tens or even several hundred gigabytes of data. Hence, efficient algorithms are required to process such amounts of data. In the recent years, there have been proposed many efficient sequential mining algorithms, which however cannot exploit current and future systems providing large degrees of parallelism. Contrary, the number of parallel frequent-itemset mining algorithms is rather small and most of them do not scale well as the number of threads is largely increased. In this paper, we present a highly-scalable mining algorithm that is based on the well-known Apriori algorithm; it is optimized for processing very large datasets on multiprocessor systems. The key idea of pcApriori is to employ a modified producer--consumer processing scheme, which partitions the data during processing and distributes it to the available threads. We conduct many experiments on large datasets. pcApriori scales almost linear on our test system comprising 32 cores.
pcApriori:多处理器系统的可伸缩先验
频繁项集挖掘是数据挖掘的重要组成部分。它是一项计算和内存密集型任务,具有大量的科学和统计应用领域。在许多情况下,数据集可以很容易地增长到几十甚至几百gb的数据。因此,需要有效的算法来处理如此大量的数据。近年来,人们提出了许多高效的顺序挖掘算法,但这些算法无法利用当前和未来提供高并行度的系统。相反,并行频繁项集挖掘算法的数量很少,而且随着线程数量的大量增加,大多数算法的可扩展性不佳。在本文中,我们提出了一种基于著名的Apriori算法的高可扩展性挖掘算法;它针对在多处理器系统上处理非常大的数据集进行了优化。pcApriori的关键思想是采用一种改进的生产者-消费者处理方案,该方案在处理过程中对数据进行分区,并将其分发给可用的线程。我们在大数据集上进行了许多实验。pcApriori在包含32个内核的测试系统上几乎呈线性扩展。
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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