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An improved algorithm of OMKC based on the optimized perceptron with the best kernel

机译:基于最优感知器和最佳核的OMKC改进算法

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Online Multiple Kernel Classification (OMKC) algorithm has been a popular method for exploring effective online combination of multiple kernel classifiers. The framework for OMKC is commonly obtained by learning multiple kernel classifiers and simultaneously their linear combination. However, the traditional perceptron algorithm which OMKC algorithm bases on does not achieve a much smaller mistake rate. In this paper, we put forward a novel algorithm based on OMKC using an improved perceptron algorithm. Our perceptron algorithm is applied with the best kernel. The algorithm produces an online validation procedure to search for the best kernel among the pool of kernels using the first 10% training examples. By using histograms analysis, our proposed algorithm can achieve smaller mistake rate and less time consuming. Extensive experimental results on twelve data sets demonstrate the effectiveness and efficiency of our algorithm.
机译:在线多核分类(OMKC)算法已成为探索多核分类器有效在线组合的一种流行方法。 OMKC的框架通常是通过学习多个内核分类器以及同时进行线性组合而获得的。但是,OMKC算法所基于的传统感知器算法并没有实现很小的错误率。在本文中,我们提出了一种使用改进的感知器算法的基于OMKC的新算法。我们的感知器算法适用于最佳内核。该算法使用前10%的训练示例生成在线验证程序,以在内核库中搜索最佳内核。通过使用直方图分析,我们提出的算法可以实现较小的错误率和较少的时间消耗。在十二个数据集上的大量实验结果证明了我们算法的有效性和效率。

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