This paper considers the problem of computing Bayesian estimates of both states and model parameters for nonlinear state-space models. Generally, this problem does not have a tractable solution and approximations must be utilised. In this work, a variational approach is used to provide an assumed density which approximates the desired, intractable, distribution. The approach is deterministic and results in an optimisation problem of a standard form. Due to the parametrisation of the assumed density selected first- and second-order derivatives are readily available which allows for efficient solutions. The proposed method is compared against state-of-the-art Hamiltonian Monte Carlo in two numerical examples.AI4Researc
International audienceWe approach the joint state and parameter estimation problem using the Bayesia...
State-space models have been successfully used for more than fifty years in different areas of scien...
Variational approximations are becoming a widespread tool for Bayesian learning of graphical models....
This paper considers the problem of computing Bayesian estimates of both states and model parameters...
In this paper, we propose a parameter estimation method for nonlinear state-space models based on th...
The variational approach to Bayesian inference enables simultaneous estimation of model parameters a...
The variational approach to Bayesian inference enables simultaneous estimation of model parameters a...
In this paper, we describe a general variational Bayesian approach for approximate inference on nonl...
We describe an ecient variational Bayesian approximation scheme for model structure selec- tion in L...
<p>Variational Bayes (VB) is rapidly becoming a popular tool for Bayesian inference in statistical m...
AbstractIn this paper, we describe a general variational Bayesian approach for approximate inference...
Abstract. This paper presents a fast variational Bayesian method for linear state-space models. The ...
Variational methods, which have become popular in the neural computing/machine learning literature, ...
Variational Bayes (VB) has been proposed as a method to facilitate calculations of the posterior dis...
Variational Bayes (VB) has been proposed as a method to facilitate calculations of the posterior dis...
International audienceWe approach the joint state and parameter estimation problem using the Bayesia...
State-space models have been successfully used for more than fifty years in different areas of scien...
Variational approximations are becoming a widespread tool for Bayesian learning of graphical models....
This paper considers the problem of computing Bayesian estimates of both states and model parameters...
In this paper, we propose a parameter estimation method for nonlinear state-space models based on th...
The variational approach to Bayesian inference enables simultaneous estimation of model parameters a...
The variational approach to Bayesian inference enables simultaneous estimation of model parameters a...
In this paper, we describe a general variational Bayesian approach for approximate inference on nonl...
We describe an ecient variational Bayesian approximation scheme for model structure selec- tion in L...
<p>Variational Bayes (VB) is rapidly becoming a popular tool for Bayesian inference in statistical m...
AbstractIn this paper, we describe a general variational Bayesian approach for approximate inference...
Abstract. This paper presents a fast variational Bayesian method for linear state-space models. The ...
Variational methods, which have become popular in the neural computing/machine learning literature, ...
Variational Bayes (VB) has been proposed as a method to facilitate calculations of the posterior dis...
Variational Bayes (VB) has been proposed as a method to facilitate calculations of the posterior dis...
International audienceWe approach the joint state and parameter estimation problem using the Bayesia...
State-space models have been successfully used for more than fifty years in different areas of scien...
Variational approximations are becoming a widespread tool for Bayesian learning of graphical models....