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Multi-kernel Growing Support Vector Regressor

机译:多核生长支持向量regressor

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This paper presents a method to iteratively grow a compact Support Vector Regressor so that the balance between size of the machine and its performance can be user-controlled. The algorithm is able to combine Gaussian kernels with different spread parameter, skipping the 'a priori' parameter estimation by allowing a progressive incorporation of nodes with decreasing values of the spread parameter, until a cross-validation stopping criterion is met. Experimental results show the significant reduction achieved in the size of the machines trained with this new algorithm and their good generalization capabilities.
机译:本文介绍了一种方法来迭代地生长一个紧凑的支持向量回归,使得机器尺寸与其性能之间的平衡可以是用户控制的。该算法能够将高斯内核与不同的扩展参数组合,跳过“先验”参数估计,允许通过降低扩展参数的减小的节点进行逐步掺入,直到满足交叉验证停止标准。实验结果表明,用这种新算法训练的机器的大小实现了显着的减少及其良好的普遍化能力。

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