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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >An adaptive support vector regression based on a new sequence of unified orthogonal polynomials
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An adaptive support vector regression based on a new sequence of unified orthogonal polynomials

机译:基于新的统一正交多项式序列的自适应支持向量回归

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摘要

In practical engineering, small-scale data sets are usually sparse and contaminated by noise. In this paper, we propose a new sequence of orthogonal polynomials varying with their coefficient, unified Chebyshev polynomials (UCP), which has two important properties, namely, orthogonality and adaptivity. Based on these new polynomials, a new kernel function, the unified Chebyshev kernel (UCK), is constructed, which has been proven to be a valid SVM kernel. To find the optimal polynomial coefficient and the optimal kernel, we propose an adaptive algorithm based on the evaluation criterion for adaptive ability of UCK. To evaluate the performance of the new method, we applied it to learning some benchmark data sets for regression, and compared it with other three algorithms. The experiment results show that the proposed adaptive algorithm has excellent generalization performance and prediction accuracy, and does not cost more time compared with other SVMs. Therefore, this method is suitable for practical engineering application.
机译:在实际工程中,小规模数据集通常稀疏并被噪声污染。在本文中,我们提出了一个随其系数而变化的正交多项式的新序列,统一切比雪夫多项式(UCP),它具有两个重要的属性,即正交性和适应性。基于这些新的多项式,构造了一个新的内核函数,即统一的Chebyshev内核(UCK),已被证明是有效的SVM内核。为了找到最优多项式系数和最优核,我们提出了一种基于UCK自适应能力评估标准的自适应算法。为了评估新方法的性能,我们将其应用于学习一些基准数据集以进行回归,并将其与其他三种算法进行比较。实验结果表明,所提出的自适应算法具有良好的泛化性能和预测精度,与其他支持向量机相比,不会花费更多的时间。因此,该方法适用于实际工程应用。

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