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首页> 外文期刊>Journal of Zhejiang university science >A parallel and scalable digital architecture for training support vector machines
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A parallel and scalable digital architecture for training support vector machines

机译:并行和可扩展的数字体系结构,用于训练支持向量机

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摘要

To facilitate the application of support vector machines (SVMs) in embedded systems, we propose and test a parallel and scalable digital architecture based on the sequential minimal optimization (SMO) algorithm for training SVMs. By taking advantage of the mature and popular SMO algorithm, the numerical instability issues that may exist in traditional numerical algorithms are avoided. The error cache updating task, which dominates the computation time of the algorithm, is mapped into multiple processing units working in parallel. Experiment results show that using the proposed architecture, SVM training problems can be solved effectively with inexpensive fixed-point arithmetic and good scalability can be achieved. This architecture overcomes the drawbacks of the previously proposed SVM hardware that lacks the necessary flexibility for embedded applications, and thus is more suitable for embedded use, where scalability is an important concern.
机译:为了促进支持向量机(SVM)在嵌入式系统中的应用,我们提出并测试了基于序列最小优化(SMO)算法的并行可扩展数字体系结构,用于训练SVM。通过利用成熟且流行的SMO算法,可以避免传统数值算法中可能存在的数值不稳定性问题。在算法的计算时间中占主导地位的错误缓存更新任务被映射到多个并行工作的处理单元中。实验结果表明,采用所提出的体系结构,可以通过廉价的定点算法有效地解决SVM训练问题,并具有良好的可扩展性。该体系结构克服了先前提出的SVM硬件的缺点,该缺点缺少嵌入式应用程序所必需的灵活性,因此更适合于可扩展性是重要考虑因素的嵌入式应用。

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