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A new working set selection for SMO-type decomposition methods

机译:SMO类型分解方法的新工作集选择

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Working set selections are an important step in the decomposition methods for training support vector machines (SVM). In this paper, a new selection for sequential minimal optimization (SMO)-type decomposition methods is presented based on systematical consideration of convergence rate, selection cost and cache performance related to the working set. The new strategy of selection can greatly improve the performance of the kernel cache without heavily increasing the cost of identifying the working set. Experiments demonstrate that the proposed method is remarkably faster than existing selections, especially for the problems with large samples or high dimensional spaces.
机译:工作集选择是训练支持向量机(SVM)的分解方法中的重要步骤。本文在系统地考虑收敛速度,选择成本和与工作集相关的缓存性能的基础上,提出了一种用于顺序最小优化(SMO)类型分解方法的新选择。新的选择策略可以大大提高内核缓存的性能,而不会大大增加识别工作集的成本。实验表明,所提出的方法比现有的方法要快得多,特别是对于大样本或高维空间的问题。

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