基于共享点积矩阵搜索SVM最优训练参数集的设计与实现

Wei Cao, Shang Ma, Jianhao Hu, Luxi Lu
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引用次数: 0

摘要

最优训练参数组合(OPTC)是支持向量机构建应用模型的核心。但是,支持向量机搜索OTPC的计算量非常大,在软件实现过程中非常耗时。为了解决这个问题,我们提出了一个共享点积矩阵(SDPM)算法。该算法计算所有训练数据集的点积并同时存储,实现了超快的处理速度。同时,提出了支持向量机OTPC搜索的软硬件协同设计架构,以配合数据处理。实现和测试结果表明,本文提出的软硬件协同系统在搜索速度上比基于软件的LIBSVM提高了30倍。
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Design and Implementation of Searching SVM Optimal Training Parameter Set Based on Shared Dot Product Matrix
The Optimal Training Parameter Combination (OPTC) is the core of the support vector machines (SVM) to construct application model. However, the calculated amount of searching OTPC of SVM is extremely huge, which is time-consuming during the process of implementation by the software. To solve this issue, we propose a Shared Dot Product Matrix (SDPM) algorithm. The algorithm computes the dot product of all training data sets and stores them simultaneously, which achieves an ultra-fast processing speed. Meanwhile, the hardware/software co-design architecture for searching OTPC of SVM is proposed to corporate the data processing. The implementation and test results have shown that, the software and hardware collaboration system proposed in this paper has the performance that is 30 times faster in searching speed than software-based LIBSVM.
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