The autoregressive (AR) process of order p(AR(p)) is a central model in time series analysis. A Bayesian approach requires the user to define a prior distribution for the coefficients of the AR(p) model. Although it is easy to write down some prior, it is not at all obvious how to understand and interpret the prior distribution, to ensure that it behaves according to the users' prior knowledge. In this article, we approach this problem using the recently developed ideas of penalised complexity (PC) priors. These prior have important properties like robustness and invariance to reparameterisations, as well as a clear interpretation. A PC prior is computed based on specific principles, where model component complexity is penalised in terms of...
International audienceThis paper studies the problem of model selection in a large class of causal t...
A Bayesian approach to the analysis of AR time series models, which permits the usual stationarity a...
International audienceThis paper studies the problem of model selection in a large class of causal t...
In the thesis, the PC prior framework is applied to construct the prior distributions for dependenci...
In this paper, we introduce a new concept for constructing prior distributions. We exploit the natur...
We consider the problem of deriving formal objective priors for the causal/stationary autoregressive...
In this paper, we introduce a new concept for constructing prior distributions. We exploit the natur...
In this paper, we introduce a new concept for constructing prior distributions. We exploit the natur...
Stationarity is a very common assumption in time series analysis. A vector autoregressive process is...
The issue of setting prior distributions on model parameters, or to attribute uncertainty for model ...
Stationarity is a very common assumption in time series analysis. A vector autoregressive process is...
Fractional Gaussian noise (fGn) is a stationary stochastic process used to model anti-persistent or...
Standard practice in Bayesian VARs is to formulate priors on the autoregressive parameters, but econ...
In this paper we use the Kullback-Leibler divergence to measure the distance between the posteriors ...
Priors are important for achieving proper posteriors with physically meaningful covariance structure...
International audienceThis paper studies the problem of model selection in a large class of causal t...
A Bayesian approach to the analysis of AR time series models, which permits the usual stationarity a...
International audienceThis paper studies the problem of model selection in a large class of causal t...
In the thesis, the PC prior framework is applied to construct the prior distributions for dependenci...
In this paper, we introduce a new concept for constructing prior distributions. We exploit the natur...
We consider the problem of deriving formal objective priors for the causal/stationary autoregressive...
In this paper, we introduce a new concept for constructing prior distributions. We exploit the natur...
In this paper, we introduce a new concept for constructing prior distributions. We exploit the natur...
Stationarity is a very common assumption in time series analysis. A vector autoregressive process is...
The issue of setting prior distributions on model parameters, or to attribute uncertainty for model ...
Stationarity is a very common assumption in time series analysis. A vector autoregressive process is...
Fractional Gaussian noise (fGn) is a stationary stochastic process used to model anti-persistent or...
Standard practice in Bayesian VARs is to formulate priors on the autoregressive parameters, but econ...
In this paper we use the Kullback-Leibler divergence to measure the distance between the posteriors ...
Priors are important for achieving proper posteriors with physically meaningful covariance structure...
International audienceThis paper studies the problem of model selection in a large class of causal t...
A Bayesian approach to the analysis of AR time series models, which permits the usual stationarity a...
International audienceThis paper studies the problem of model selection in a large class of causal t...