This paper addresses the sensitivity of the algorithm proposed by Andrieu and Doucet (IEEE Trans. Signal Process., 47(10), 1999), for the joint Bayesian model selection and estimation of sinusoids in white Gaussian noise, to the values of a certain hyperparameter claimed to be weakly influential in the original paper. A deeper study of this issue reveals indeed that the value of this hyperparameter (the scale parameter of the expected signal-to-noise ratio) has a significant influence on 1) the mixing rate of the Markov chain and 2) the posterior distribution of the number of components. As a possible workaround for this problem, we investigate an Empirical Bayes approach to select an appropriate value for this hyperparameter in a data-driv...
The aim of this paper is to demonstrate the potential of the Reversible Jump Markov Chain Monte Carl...
The performance of nonparametric estimators is heavily dependent on a bandwidth parameter. In nonpar...
This thesis consists of two main parts, both of which focus on Bayesian methods and the problem of m...
This work addresses the sensitivity of the algorithm proposed by Andrieu and Doucet (IEEE T. Signal ...
This paper addresses the sensitivity of the algorithm proposed by Andrieu and Doucet (IEEE Trans. Si...
This paper addresses the behavior in low SNR situations of the algorithm proposed by Andrieu and Dou...
In this paper, the problem of joint Bayesian model selection and parameter estimation for sinusoids ...
This study deals with parameter estimation of sinusoids within a Bayesian framework, where inference...
In this paper, we consider a problem of detecting and estimating of sinusoids corrupted by random no...
This paper deals with a parameter estimation problem within a Bayesian framework. Performing Bayesia...
MCMC sampling is a methodology that is becoming increasingly important in statistical signal process...
International audienceReversible jump MCMC (RJ-MCMC) sampling techniques, which allow to jointly tac...
In this paper, an introduction to Bayesian methods in signal processing will be given. The paper sta...
In this paper, we studied Bayesian analysis proposed by Bretthorst[6] for a general signal model equ...
In this paper, we studied Bayesian analysis proposed by Bretthorst[6] for a general signal model equ...
The aim of this paper is to demonstrate the potential of the Reversible Jump Markov Chain Monte Carl...
The performance of nonparametric estimators is heavily dependent on a bandwidth parameter. In nonpar...
This thesis consists of two main parts, both of which focus on Bayesian methods and the problem of m...
This work addresses the sensitivity of the algorithm proposed by Andrieu and Doucet (IEEE T. Signal ...
This paper addresses the sensitivity of the algorithm proposed by Andrieu and Doucet (IEEE Trans. Si...
This paper addresses the behavior in low SNR situations of the algorithm proposed by Andrieu and Dou...
In this paper, the problem of joint Bayesian model selection and parameter estimation for sinusoids ...
This study deals with parameter estimation of sinusoids within a Bayesian framework, where inference...
In this paper, we consider a problem of detecting and estimating of sinusoids corrupted by random no...
This paper deals with a parameter estimation problem within a Bayesian framework. Performing Bayesia...
MCMC sampling is a methodology that is becoming increasingly important in statistical signal process...
International audienceReversible jump MCMC (RJ-MCMC) sampling techniques, which allow to jointly tac...
In this paper, an introduction to Bayesian methods in signal processing will be given. The paper sta...
In this paper, we studied Bayesian analysis proposed by Bretthorst[6] for a general signal model equ...
In this paper, we studied Bayesian analysis proposed by Bretthorst[6] for a general signal model equ...
The aim of this paper is to demonstrate the potential of the Reversible Jump Markov Chain Monte Carl...
The performance of nonparametric estimators is heavily dependent on a bandwidth parameter. In nonpar...
This thesis consists of two main parts, both of which focus on Bayesian methods and the problem of m...