Scalable frequent itemset mining on many-core processors

B. Schlegel, Tomas Karnagel, Tim Kiefer, Wolfgang Lehner
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引用次数: 32

Abstract

Frequent-itemset mining is an essential part of the association rule mining process, which has many application areas. It is a computation and memory intensive task with many opportunities for optimization. Many efficient sequential and parallel algorithms were proposed in the recent years. Most of the parallel algorithms, however, cannot cope with the huge number of threads that are provided by large multiprocessor or many-core systems. In this paper, we provide a highly parallel version of the well-known Eclat algorithm. It runs on both, multiprocessor systems and many-core coprocessors, and scales well up to a very large number of threads---244 in our experiments. To evaluate mcEclat's performance, we conducted many experiments on realistic datasets. mcEclat achieves high speedups of up to 11.5x and 100x on a 12-core multiprocessor system and a 61-core Xeon Phi many-core coprocessor, respectively. Furthermore, mcEclat is competitive with highly optimized existing frequent-itemset mining implementations taken from the FIMI repository.
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多核处理器上可扩展的频繁项集挖掘
频繁项集挖掘是关联规则挖掘过程的重要组成部分,具有广泛的应用领域。这是一个计算和内存密集的任务,有很多优化的机会。近年来,人们提出了许多高效的顺序和并行算法。然而,大多数并行算法无法处理大型多处理器或多核系统所提供的大量线程。在本文中,我们提供了一个著名的Eclat算法的高度并行版本。它可以在多处理器系统和多核协处理器上运行,并且可以很好地扩展到非常多的线程——在我们的实验中有244个线程。为了评估mcEclat的性能,我们在现实数据集上进行了许多实验。mcEclat在12核多处理器系统和61核Xeon Phi多核协处理器上分别实现了高达11.5倍和100倍的高速。此外,mcEclat与来自FIMI存储库的高度优化的现有频繁项集挖掘实现竞争。
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