Mining Association Rules with systolic trees

S. Sun, Joseph Zambreno
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引用次数: 25

Abstract

Association Rules Mining (ARM) algorithms are designed to find sets of frequently occurring items in large databases. ARM applications have found their way into a variety of fields, including medicine, biotechnology, and marketing. This class of algorithm is typically very memory intensive, leading to prohibitive runtimes on large databases. Previous attempts at acceleration using custom or reconfigurable hardware have been limited, as many of the significant ARM algorithms were designed from a software developerpsilas perspective and have features (e.g. dynamic linked lists, recursion) that do not translate well to hardware. In this paper we look at how we can accomplish the goal of association rules mining from a hardware perspective. We investigate a popular tree-based ARM algorithm (FP-growth), and make use of a systolic tree structure, which mimics the internal memory layout of the original software algorithm while achieving much higher throughput. Our experimental prototype demonstrates how we can trade memory resources on a software platform for computational resources on a reconfigurable hardware platform, in order to exploit a fine-grained parallelism that was not inherent in the original ARM algorithm.
利用收缩树挖掘关联规则
关联规则挖掘(ARM)算法设计用于在大型数据库中查找频繁出现的条目集。ARM应用已经进入了许多领域,包括医药、生物技术和市场营销。这类算法通常非常占用内存,导致在大型数据库上的运行时间令人望而却步。先前使用自定义或可重构硬件进行加速的尝试受到了限制,因为许多重要的ARM算法是从软件开发人员的角度设计的,并且具有不能很好地转换到硬件的特性(例如动态链表,递归)。在本文中,我们从硬件的角度来看如何实现关联规则挖掘的目标。我们研究了一种流行的基于树的ARM算法(FP-growth),并利用了一种收缩树结构,它模仿了原始软件算法的内存布局,同时实现了更高的吞吐量。我们的实验原型演示了如何将软件平台上的内存资源用于可重构硬件平台上的计算资源,以利用原始ARM算法中不固有的细粒度并行性。
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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