L2-SVM的在线最近点算法

Guosheng Wang
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引用次数: 0

摘要

在过去的几年中,已经开发了许多基于内核的在线算法,这些算法在许多任务上显示出更好的性能。一个设计良好的在线算法需要较少的计算量才能达到与相应的批处理算法相同的测试精度。本文设计了一种L2-SVM的在线训练算法。我们的工作是由A. Bordes和L. Bottou提出的在线算法HULLER驱动的。相对于HULLER算法,该算法实现了两方面的加速:一是基于声音计算选择旧样本进行去除,而不是随机选择;其次,它使用了更有效的更新规则。在基准数据集上的实验表明了该方法的优点。
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Online Nearest Point Algorithm for L2-SVM
During last few years, a number of kernel-based online algorithms have been developed that have shown better performance on a number of tasks. A well designed online algorithm needs less computation to reach the same test accuracy as the corresponding batch algorithm. In this paper, we devise an online training algorithm for L2-SVM. Our work is motivated by HULLER, an online algorithm proposed by A. Bordes and L. Bottou. The proposed algorithm implements two speedups with respect to HULLER, first it chooses an old example for removal based on sound computation instead of random selection; second it uses more effective update rule. Experiments on benchmark data sets show the merits of our method.
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