异构平台上的高度并行顺序模式挖掘

Yu-Heng Hsieh, Chun-Chieh Chen, Hong-Han Shuai, Ming-Syan Chen
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引用次数: 1

摘要

序列模式挖掘可以应用于疾病预测、库存分析等多个领域。对于顺序模式挖掘,已经提出了许多算法和加速方法。在本文中,我们证明了具有CPU和GPU的异构平台比传统的基于CPU的方法更适合于顺序模式挖掘,因为支持计数过程本质上是简洁和重复的。因此,我们提出并行顺序模式挖掘算法,简称PASTA,通过结合CPU和GPU计算的优点来加速顺序模式挖掘。PASTA明确地采用数据库的垂直位图表示来利用GPU的并行性。此外,提出了一种流水线策略,以保证异构平台上CPU和GPU的并行运行,充分利用平台的计算能力。此外,我们开发了一种交换方案来缓解GPU硬件有限的内存问题,而不会降低性能。最后,对不同基线的PASTA进行综合实验分析。实验表明,PASTA在真实和合成数据集上的性能都优于最先进的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Highly Parallel Sequential Pattern Mining on a Heterogeneous Platform
Sequential pattern mining can be applied to various fields such as disease prediction and stock analysis. Many algorithms have been proposed for sequential pattern mining, together with acceleration methods. In this paper, we show that a heterogeneous platform with CPU and GPU is more suitable for sequential pattern mining than traditional CPU-based approaches since the support counting process is inherently succinct and repetitive. Therefore, we propose the PArallel SequenTial pAttern mining algorithm, referred to as PASTA, to accelerate sequential pattern mining by combining the merits of CPU and GPU computing. Explicitly, PASTA adopts the vertical bitmap representation of database to exploits the GPU parallelism. In addition, a pipeline strategy is proposed to ensure that both CPU and GPU on the heterogeneous platform operate concurrently to fully utilize the computing power of the platform. Furthermore, we develop a swapping scheme to mitigate the limited memory problem of the GPU hardware without decreasing the performance. Finally, comprehensive experiments are conducted to analyze PASTA with different baselines. The experiments show that PASTA outperforms the state-of-the-art algorithms by orders of magnitude on both real and synthetic datasets.
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