In this paper, we propose an outlier-robust regularized kernel-based method for linear system identification. The unknown impulse response is modeled as a zero-mean Gaussian process whose covariance (kernel) is given by the recently proposed stable spline kernel, which encodes information on regularity and exponential stability. To build robustness to outliers, we model the measurement noise as realizations of independent Laplacian random variables. The identification problem is cast in a Bayesian framework, and solved by a new Markov Chain Monte Carlo (MCMC) scheme. In particular, exploiting the representation of the Laplacian random variables as scale mixtures of Gaussians, we design a Gibbs sampler which quickly converges to the target d...
In some recent works, an alternative nonparamet- ric paradigm to linear model identification has bee...
Many classical problems in system identification, such as the classical predictionerror method and r...
Recent contributions have investigated the use of regularization in linear system identification. In...
Abstract: In this paper, we propose an outlier-robust regularized kernel-based method for linear sys...
Recent developments in system identification have brought attention to regularized kernel-based meth...
In this paper we introduce a novel method for linear system identification with quantized output dat...
Recent developments in system identification have brought attention to regularized kernel-based meth...
In this paper we introduce a novel method for linear system identification with quantized output dat...
This paper describes a new kernel-based approach for linear system identification of stable systems....
In this letter, we present an extension of the class of uncertain-input models to handle cases of me...
This paper describes a new kernel-based approach for linear system identification of stable systems....
This paper describes a new kernel-based approach for linear system identification of stable systems....
One of the central issues in system identification consists not only in obtaining a good model of th...
In this contribution, we propose a kernel-based method for the identification of linear systems from...
We consider the identification of large-scale linear and stable dynamic systems whose outputs may be...
In some recent works, an alternative nonparamet- ric paradigm to linear model identification has bee...
Many classical problems in system identification, such as the classical predictionerror method and r...
Recent contributions have investigated the use of regularization in linear system identification. In...
Abstract: In this paper, we propose an outlier-robust regularized kernel-based method for linear sys...
Recent developments in system identification have brought attention to regularized kernel-based meth...
In this paper we introduce a novel method for linear system identification with quantized output dat...
Recent developments in system identification have brought attention to regularized kernel-based meth...
In this paper we introduce a novel method for linear system identification with quantized output dat...
This paper describes a new kernel-based approach for linear system identification of stable systems....
In this letter, we present an extension of the class of uncertain-input models to handle cases of me...
This paper describes a new kernel-based approach for linear system identification of stable systems....
This paper describes a new kernel-based approach for linear system identification of stable systems....
One of the central issues in system identification consists not only in obtaining a good model of th...
In this contribution, we propose a kernel-based method for the identification of linear systems from...
We consider the identification of large-scale linear and stable dynamic systems whose outputs may be...
In some recent works, an alternative nonparamet- ric paradigm to linear model identification has bee...
Many classical problems in system identification, such as the classical predictionerror method and r...
Recent contributions have investigated the use of regularization in linear system identification. In...