This paper presents a nonparametric Bayesian interpretation of kernel-based function learning with manifold regularization. We show that manifold regularization corresponds to an additional likelihood term derived from noisy observations of the function gradient along the regressors graph. The hyperparameters of the method are estimated by a suitable empirical Bayes approach. The effectiveness of the method in the context of dynamical system identification is evaluated on a simulated linear system and on an experimental switching system setup. (C) 2022 Elsevier Ltd. All rights reserved
This paper describes a new kernel-based approach for linear system identification of stable systems....
Many common machine learning methods such as Support Vector Machines or Gaussian process inference m...
High-dimensional regression problems are becoming more and more common with emerging technologies. H...
This paper presents a nonparametric Bayesian interpretation of kernel-based function learning with m...
In this paper, we present a simulation study to investigate the role of manifold regularization in k...
Most of the currently used techniques for linear system identification are based on classical estima...
This paper presents a novel nonparametric approach to the identification of nonlinear dynamical syst...
System identification has, in recent years, drawn insightful inspirations from techniques and conce...
Kernel-based regularization approaches for lin- ear time-invariant system identification have been i...
Recent developments in system identification have brought attention to regularized kernel-based meth...
International audienceMany inference problems relate to a dynamical system, as represented by dx/dt ...
Recent developments in system identification have brought attention to regularized kernel-based meth...
International audienceWe consider the problem of network inference that occurs for instance in syste...
This paper describes a new kernel-based approach for linear system identification of stable systems....
Many common machine learning methods such as Support Vector Machines or Gaussian process inference m...
High-dimensional regression problems are becoming more and more common with emerging technologies. H...
This paper presents a nonparametric Bayesian interpretation of kernel-based function learning with m...
In this paper, we present a simulation study to investigate the role of manifold regularization in k...
Most of the currently used techniques for linear system identification are based on classical estima...
This paper presents a novel nonparametric approach to the identification of nonlinear dynamical syst...
System identification has, in recent years, drawn insightful inspirations from techniques and conce...
Kernel-based regularization approaches for lin- ear time-invariant system identification have been i...
Recent developments in system identification have brought attention to regularized kernel-based meth...
International audienceMany inference problems relate to a dynamical system, as represented by dx/dt ...
Recent developments in system identification have brought attention to regularized kernel-based meth...
International audienceWe consider the problem of network inference that occurs for instance in syste...
This paper describes a new kernel-based approach for linear system identification of stable systems....
Many common machine learning methods such as Support Vector Machines or Gaussian process inference m...
High-dimensional regression problems are becoming more and more common with emerging technologies. H...