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Outlier robust kernel-based system identification using l_1-Laplace techniques

机译:基于强大的基于内核的系统识别使用L_1-LAPLACE技术

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Regularized kernel-based methods for system identification have gained popularity in recent years. However, current formulations are not robust with respect to outliers. In this paper, we study possible solutions to robustify kernel-based methods that rely on modeling noise using the Laplacian probability density function (pdf). The contribution of this paper is two-fold. First, we introduce a new outlier robust kernel-based system identification method. It exploits the representation of Laplacian pdfs as scale mixture of Gaussians. The hyperparameters characterizing the problem are chosen using a new maximum a posteriori estimator whose solution is computed using a novel iterative scheme based on the expectation-maximization method. The second contribution of the paper is the review of two other robust kernel-based methods. The three methods are compared by means of numerical experiments, which show that all of them give substantial performance improvements compared to standard kernel-based methods for linear system identification.
机译:近年来,基于基于内核的系统识别方法已经受欢迎。然而,目前的制剂对异常值并不稳健。在本文中,我们研究了使用Laplacian概率密度函数(PDF)依赖基于内核的基于内核的方法的解决方案。本文的贡献是双重的。首先,我们介绍了一种新的基于鲁棒内核的系统识别方法。它利用拉普拉斯PDF的表示作为高斯的比例混合。表征问题的超参数选择使用新的最大估计器选择,其通过基于期望最大化方法使用新颖的迭代方案来计算的。本文的第二个贡献是审查另外两种基于核心的内核的方法。通过数值实验比较了这三种方法,表明与基于标准的内核的线性系统识别的方法相比,所有这些方法都表明所有的性能改进。

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