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Regularized spectrum estimation in spaces induced by stable spline kernels

机译:稳定样条核在空间中的正则谱估计

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We introduce a new kernel-based nonparametric approach to estimate the second-order statistics of scalar and stationary stochastic processes. The correlations functions are assumed to be summable and are modeled as realizations of zero-mean Gaussian processes using the recently introduced Stable Spline kernel. In this way, information on the decay to zero of the functions to reconstruct is included in the estimation process. The overall complexity of the proposed algorithm scales linearly with the number of available samples of the processes. Numerical experiments show that the method compares favorably with respect to classical nonparametric spectral analysis approaches with an oracle-type choice of the parameters.
机译:我们引入了一种新的基于核的非参数方法来估计标量和平稳随机过程的二阶统计量。假设相关函数是可加的,并使用最近引入的稳定样条线内核将其建模为零均值高斯过程的实现。这样,在估计过程中包括了关于要重构的函数的衰减到零的信息。所提出算法的整体复杂度与过程的可用样本数成线性比例。数值实验表明,与传统的非参数光谱分析方法相比,该方法具有Oracle类型的参数选择,具有优越的性能。

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