In generative modeling of neuroimaging data, such as dynamic causal modeling (DCM), one typically considers several alternative models, either to determine the most plausible explanation for observed data (Bayesian model selection) or to account for model uncertainty (Bayesian model averaging). Both procedures rest on estimates of the model evidence, a principled trade-off between model accuracy and complexity. In the context of DCM, the log evidence is usually approximated using variational Bayes. Although this approach is highly efficient, it makes distributional assumptions and is vulnerable to local extrema. This paper introduces the use of thermodynamic integration (TI) for Bayesian model selection and averaging in the context of DCM. ...
International audienceDynamic causal modeling (DCM) is a methodological approach to study effective ...
This article describes the use of Bayes factors for comparing Dynamic Causal Models (DCMs). DCMs are...
Mathematical models of scientific data can be formally compared using Bayesian model evidence. Previ...
In generative modeling of neuroimaging data, such as dynamic causal modeling (DCM), one typically co...
International audienceThe goal of dynamic causal modelling (DCM) of neuroimaging data is to study ex...
AbstractIn this technical note, we derive two MCMC (Markov chain Monte Carlo) samplers for dynamic c...
The goal of dynamic causal modelling (DCM) of neuroimaging data is to study experimentally induced c...
This work is about understanding the dynamics of neuronal systems, in particular with respect to br...
Complex processes resulting from interaction of multiple elements can rarely be understood by analyt...
BACKGROUND: Dynamic causal modeling (DCM) for fMRI is an established method for Bayesian system iden...
International audienceComplex processes resulting from interaction of multiple elements can rarely b...
BACKGROUND: Dynamic causal modeling (DCM) for fMRI is an established method for Bayesian system iden...
AbstractDynamic causal modeling (DCM) is a generic Bayesian framework for inferring hidden neuronal ...
AbstractDynamic causal modelling (DCM) was originally proposed as a hypothesis driven procedure in w...
This article describes the use of Bayes factors for comparing dynamic causal models (DCMs). DCMs are...
International audienceDynamic causal modeling (DCM) is a methodological approach to study effective ...
This article describes the use of Bayes factors for comparing Dynamic Causal Models (DCMs). DCMs are...
Mathematical models of scientific data can be formally compared using Bayesian model evidence. Previ...
In generative modeling of neuroimaging data, such as dynamic causal modeling (DCM), one typically co...
International audienceThe goal of dynamic causal modelling (DCM) of neuroimaging data is to study ex...
AbstractIn this technical note, we derive two MCMC (Markov chain Monte Carlo) samplers for dynamic c...
The goal of dynamic causal modelling (DCM) of neuroimaging data is to study experimentally induced c...
This work is about understanding the dynamics of neuronal systems, in particular with respect to br...
Complex processes resulting from interaction of multiple elements can rarely be understood by analyt...
BACKGROUND: Dynamic causal modeling (DCM) for fMRI is an established method for Bayesian system iden...
International audienceComplex processes resulting from interaction of multiple elements can rarely b...
BACKGROUND: Dynamic causal modeling (DCM) for fMRI is an established method for Bayesian system iden...
AbstractDynamic causal modeling (DCM) is a generic Bayesian framework for inferring hidden neuronal ...
AbstractDynamic causal modelling (DCM) was originally proposed as a hypothesis driven procedure in w...
This article describes the use of Bayes factors for comparing dynamic causal models (DCMs). DCMs are...
International audienceDynamic causal modeling (DCM) is a methodological approach to study effective ...
This article describes the use of Bayes factors for comparing Dynamic Causal Models (DCMs). DCMs are...
Mathematical models of scientific data can be formally compared using Bayesian model evidence. Previ...