图形处理单元在加速带宽选择核密度估计

W. Andrzejewski, A. Gramacki, J. Gramacki
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引用次数: 20

摘要

摘要概率密度函数是统计学中的一个重要概念。从观测数据中构建最充分的PDF仍然是一个重要而有趣的科学问题,特别是对于大型数据集。pdf通常使用非参数数据驱动的方法进行估计。最流行的非参数方法之一是核密度估计(KDE)。然而,使用kde的一个非常严重的缺点是需要进行大量的计算,特别是要找到最优带宽参数。在本文中,我们研究了利用图形处理单元(gpu)来加速带宽查找的可能性。本文的贡献有三个:(a)我们提出了一种带宽查找算法的算法优化,(b)我们提出了三种带宽查找算法的高效GPU版本,(c)我们实验比较了我们的三种GPU实现与仅利用cpu的GPU实现。我们的实验显示了经典算法的CPU实现的数量级改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graphics processing units in acceleration of bandwidth selection for kernel density estimation
Abstract The Probability Density Function (PDF) is a key concept in statistics. Constructing the most adequate PDF from the observed data is still an important and interesting scientific problem, especially for large datasets. PDFs are often estimated using nonparametric data-driven methods. One of the most popular nonparametric method is the Kernel Density Estimator (KDE). However, a very serious drawback of using KDEs is the large number of calculations required to compute them, especially to find the optimal bandwidth parameter. In this paper we investigate the possibility of utilizing Graphics Processing Units (GPUs) to accelerate the finding of the bandwidth. The contribution of this paper is threefold: (a) we propose algorithmic optimization to one of bandwidth finding algorithms, (b) we propose efficient GPU versions of three bandwidth finding algorithms and (c) we experimentally compare three of our GPU implementations with the ones which utilize only CPUs. Our experiments show orders of magnitude improvements over CPU implementations of classical algorithms.
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