The aim of this paper is to demonstrate the potential of the Reversible Jump Markov Chain Monte Carlo (RJMCMC) algorithm when applied to system identification problems which involve both parameter estima- tion and model selection. Within the context of Bayesian Inference, Markov Chain Monte Carlo (MCMC) methods have been used for a long period of time to address the parameter estimation of linear and nonlinear systems, which are described approximately by a model. It is often the case that there are a set of competing model structures that could potentially produce good approximations of the real system - this raises the issue of model selection. Even though they address parameter estimation, many MCMC samplers cannot address model s...
This thesis consists ideas of two new population Markov chain Monte Carlo algorithms and an automati...
A recently proposed general Bayesian inference framework (Bisaillon, Sandhu, Khalil, Poirel,& Sarkar...
In this thesis, a Bayesian approach is adopted to handle parameter estimation and model uncertainty ...
The aim of this paper is to demonstrate the potential of the Reversible Jump Markov Chain Monte Carl...
Volterra systems have had significant success in modelling nonlinear systems in various real-world a...
A Markov chain Monte Carlo (MCMC) approach, called a reversible jump MCMC, is employed in model sele...
We review the across-model simulation approach to computation for Bayesian model determination, base...
The Bayesian approach is well recognised in the structural dynamics community as an attractive appro...
This work details the Bayesian identification of a nonlinear dynamical system using a novel MCMC alg...
Various real world phenomena such as optical communication channels, power amplifiers and movement o...
In this paper, we apply a Bayesian model selection and parameter estimation scheme for a stochastic ...
The work here explores new numerical methods for supporting a Bayesian approach to parameter estimat...
This article considers Markov chain computational methods for incorporating uncertainty about the d...
In this paper, the authors outline the general principles behind an approach to Bayesian system iden...
24th European Signal Processing Conference (EUSIPCO) -- AUG 28-SEP 02, 2016 -- Budapest, HUNGARYAlti...
This thesis consists ideas of two new population Markov chain Monte Carlo algorithms and an automati...
A recently proposed general Bayesian inference framework (Bisaillon, Sandhu, Khalil, Poirel,& Sarkar...
In this thesis, a Bayesian approach is adopted to handle parameter estimation and model uncertainty ...
The aim of this paper is to demonstrate the potential of the Reversible Jump Markov Chain Monte Carl...
Volterra systems have had significant success in modelling nonlinear systems in various real-world a...
A Markov chain Monte Carlo (MCMC) approach, called a reversible jump MCMC, is employed in model sele...
We review the across-model simulation approach to computation for Bayesian model determination, base...
The Bayesian approach is well recognised in the structural dynamics community as an attractive appro...
This work details the Bayesian identification of a nonlinear dynamical system using a novel MCMC alg...
Various real world phenomena such as optical communication channels, power amplifiers and movement o...
In this paper, we apply a Bayesian model selection and parameter estimation scheme for a stochastic ...
The work here explores new numerical methods for supporting a Bayesian approach to parameter estimat...
This article considers Markov chain computational methods for incorporating uncertainty about the d...
In this paper, the authors outline the general principles behind an approach to Bayesian system iden...
24th European Signal Processing Conference (EUSIPCO) -- AUG 28-SEP 02, 2016 -- Budapest, HUNGARYAlti...
This thesis consists ideas of two new population Markov chain Monte Carlo algorithms and an automati...
A recently proposed general Bayesian inference framework (Bisaillon, Sandhu, Khalil, Poirel,& Sarkar...
In this thesis, a Bayesian approach is adopted to handle parameter estimation and model uncertainty ...