面向多个共享内存架构的并行k- means++

Patrick Mackey, R. Lewis
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引用次数: 6

摘要

近年来,k-means++已成为一种流行的初始化技术,用于改进k-means聚类。迄今为止,为提高其性能所做的大部分工作都涉及到并行算法,这些算法只是k-means++的近似值。本文给出了精确k-means++算法的并行化,并证明了其正确性。我们为三种不同的共享内存架构开发实现:多核CPU、高性能GPU和大规模多线程Cray XMT平台。我们演示了算法在每个平台上的可扩展性。此外,我们还提供了一种可视化的方法来显示哪个平台在不同的数据大小下执行k- meme++最快。
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Parallel k-Means++ for Multiple Shared-Memory Architectures
In recent years k-means++ has become a popular initialization technique for improved k-means clustering. To date, most of the work done to improve its performance has involved parallelizing algorithms that are only approximations of k-means++. In this paper we present a parallelization of the exact k-means++ algorithm, with a proof of its correctness. We develop implementations for three distinct shared-memory architectures: multicore CPU, high performance GPU, and the massively multithreaded Cray XMT platform. We demonstrate the scalability of the algorithm on each platform. In addition we present a visual approach for showing which platform performed k-means++ the fastest for varying data sizes.
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