In this paper we introduce a novel method for linear system identification with quantized output data. We model the impulse response 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. This serves as a starting point to cast our system identification problem into a Bayesian framework. We employ Markov Chain Monte Carlo (MCMC) methods to provide an estimate of the system. In particular, we show how to design a Gibbs sampler which quickly converges to the target distribution. Numerical simulations show a substantial improvement in the accuracy of the estimates over state-of-the-art kernel-based methods when employed...
Identification of dynamical systems from low resolution quantized observations presents several chal...
Recent developments in system identification have brought attention to regularized kernel-based meth...
AbstractIn the last 20 years the applicability of Bayesian inference to the system identification of...
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 paper, we propose an outlier-robust regularized kernel-based method for linear system identi...
Abstract: In this paper, we propose an outlier-robust regularized kernel-based method for linear sys...
In this contribution, we propose a kernel-based method for the identification of linear systems from...
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....
We consider the identification of large-scale linear and stable dynamic systems whose outputs may be...
Many classical problems in system identification, such as the classical predictionerror method and r...
In some recent works, an alternative nonparamet- ric paradigm to linear model identification has bee...
Most of the currently used techniques for linear system identification are based on classical estima...
Recent developments in system identification have brought attention to regularized kernel-based meth...
Identification of dynamical systems from low resolution quantized observations presents several chal...
Recent developments in system identification have brought attention to regularized kernel-based meth...
AbstractIn the last 20 years the applicability of Bayesian inference to the system identification of...
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 paper, we propose an outlier-robust regularized kernel-based method for linear system identi...
Abstract: In this paper, we propose an outlier-robust regularized kernel-based method for linear sys...
In this contribution, we propose a kernel-based method for the identification of linear systems from...
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....
We consider the identification of large-scale linear and stable dynamic systems whose outputs may be...
Many classical problems in system identification, such as the classical predictionerror method and r...
In some recent works, an alternative nonparamet- ric paradigm to linear model identification has bee...
Most of the currently used techniques for linear system identification are based on classical estima...
Recent developments in system identification have brought attention to regularized kernel-based meth...
Identification of dynamical systems from low resolution quantized observations presents several chal...
Recent developments in system identification have brought attention to regularized kernel-based meth...
AbstractIn the last 20 years the applicability of Bayesian inference to the system identification of...