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Parallel Training Strategy Based on Support Vector Regression Machine

机译:基于支持向量回归机的并行训练策略

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In this paper, we investigate the parallel training strategy and propose a parallel Support Vector Regression Machine algorithm that integrates model segmentation and data space decomposition. The major aim is to explore the new data space decomposition scheme that can solve computation intensive problem about the long time training based on SVR's classification by using low-dimension algorithms. The strategy, which divides the whole task into several sub-tasks based on the sample division strategy, uses master-slave mode on the design of parallel program, and finally the master node produce a regression mode by collecting training results. The performance of this algorithm has been analyzed and evaluated with KDD99 data on the high-performance computer of ZQ3000 cluster. The results on this paper prove that the algorithm can guarantee the high precision in the regression and reduce the training time.
机译:在本文中,我们研究了并行训练策略,并提出了一种将模型分割和数据空间分解相结合的并行支持向量回归机算法。主要目的是探索一种新的数据空间分解方案,该方案可以使用低维算法解决基于SVR分类的长时间训练的计算密集型问题。该策略基于样本划分策略将整个任务分为几个子任务,该策略在并行程序设计中使用主从模式,最后主节点通过收集训练结果生成回归模式。该算法的性能已经在ZQ3000集群的高性能计算机上使用KDD99数据进行了分析和评估。结果表明,该算法可以保证回归的高精度,减少训练时间。

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