基于gpu的支持向量机并行多类分类

GPGPU-3 Pub Date : 2010-03-14 DOI:10.1145/1735688.1735692
Sergio Herrero-Lopez, John R. Williams, Abel Sanchez
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引用次数: 69

摘要

串行算法的扩展不再依赖于cpu的改进。经典支持向量机(SVM)算法的性能已经达到极限,多核时代的到来要求这些算法适应新的并行场景。图形处理单元(GPU)已成为实现数据并行算法的高性能平台。本文描述了基于支持向量机的多类分类器的naïve实现如何将其固有的并行度映射到GPU编程模型,并有效地利用其计算吞吐量。实验结果表明,在保证相同准确率的前提下,该算法的训练时间和分类时间比经典的多类求解器LIBSVM减少了一个数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parallel multiclass classification using SVMs on GPUs
The scaling of serial algorithms cannot rely on the improvement of CPUs anymore. The performance of classical Support Vector Machine (SVM) implementations has reached its limit and the arrival of the multi core era requires these algorithms to adapt to a new parallel scenario. Graphics Processing Units (GPU) have arisen as high performance platforms to implement data parallel algorithms. In this paper, it is described how a naïve implementation of a multiclass classifier based on SVMs can map its inherent degrees of parallelism to the GPU programming model and efficiently use its computational throughput. Empirical results show that the training and classification time of the algorithm can be reduced an order of magnitude compared to a classical multiclass solver, LIBSVM, while guaranteeing the same accuracy.
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