Efficient SVM Training Using Parallel Primal-Dual Interior Point Method on GPU

Jing Jin, Xianggao Cai, X. Lin
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引用次数: 4

Abstract

The training of SVM can be viewed as a Convex Quadratic Programming (CQP) problem which becomes difficult to be solved when dealing with the large scale data sets. Traditional methods such as Sequential Minimal Optimization (SMO) for SVM training is used to solve a sequence of small scale sub-problems, which costs a large amount of computation time and is hard to be accelerated by utilizing the computation power of GPU. Although Interior Point Method (IPM) such as primal-dual interior point method (PDIPM) can be also addressed SVM training well and has favourable potential for parallelizing on GPU, it contains comparatively high time complexity O(l^3) and space complexity O(l^2), where l is the number of training instances. Fortunately, by invoking low-rank approximation methods such as Incomplete Cholesky Factorization (ICF) and Sherman Morrison Woodbury formula (SMW), the requirements of both storage and computation of PDIPM can be reduced significantly. In this paper, a parallel PDIPM method (P-PDIPM) along with a parallel ICF method (P-ICF) is proposed to accelerate the SVM training on GPU. Experimental results indicate that the training speed of P-PDIPM on GPU is almost 40x faster than that of the serial one (S-PDIPM) on CPU. Besides, without extensive optimization, P-PDIPM can obtain about 8x speedup over the state of the art tool LIBSVM while maintaining high prediction accuracy.
基于GPU的并行原对偶内点法的SVM高效训练
支持向量机的训练可以看作是一个凸二次规划(CQP)问题,在处理大规模数据集时变得难以解决。传统的支持向量机训练方法如序列最小优化(SMO)是用来求解一系列小规模子问题的,计算时间长,且难以利用GPU的计算能力进行加速。虽然原始对偶内点法(PDIPM)等内点法(IPM)也可以很好地解决SVM训练问题,并且在GPU上具有良好的并行化潜力,但它具有较高的时间复杂度O(l^3)和空间复杂度O(l^2),其中l为训练实例数。幸运的是,通过调用低秩近似方法,如不完全Cholesky分解(ICF)和Sherman Morrison Woodbury公式(SMW), PDIPM的存储和计算需求都可以显著降低。本文提出了一种并行PDIPM方法(P-PDIPM)和并行ICF方法(P-ICF)来加速支持向量机在GPU上的训练。实验结果表明,P-PDIPM在GPU上的训练速度比S-PDIPM在CPU上的训练速度快近40倍。此外,在不进行大量优化的情况下,P-PDIPM在保持较高预测精度的同时,可以获得比最先进工具LIBSVM约8倍的加速。
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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