In this paper, we introduce a new concept for constructing prior distributions. We exploit the natural nested structure inherent to many model components, which defines the model component to be a flexible extension of a base model. Proper priors are defined to penalise the complexity induced by deviating from the simpler base model and are formulated after the input of a user-defined scaling parameter for that model component, both in the univariate and the multivariate case. These priors are invariant to reparameterisations, have a natural connection to Jeffreys’ priors, are designed to support Occam’s razor and seem to have excellent robustness properties, all which are highly desirable and allow us to use this approach to define default...
In Bayesian statistics, if the distribution of the data is unknown, then each plausible distribution...
In Bayesian statistics, if the distribution of the data is unknown, then each plausible distribution...
In Bayesian statistics, if the distribution of the data is unknown, then each plausible distribution...
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...
The issue of setting prior distributions on model parameters, or to attribute uncertainty for model ...
We consider a multivariate model with independent marginals as a benchmark for a generic multivariat...
We consider a multivariate model with independent marginals as a benchmark for a generic multivariat...
The autoregressive (AR) process of order p(AR(p)) is a central model in time series analysis. A Baye...
In the present paper, we describe and explore new methods for constructing joint penalised complexit...
In contrast to a posterior analysis given a particular sampling model, posterior model probabilities...
Priors are important for achieving proper posteriors with physically meaningful covariance structure...
Lack of independence in the residuals from linear regression motivates the use of random effect mode...
We investigate the choice of default priors for use with likelihood for Bayesian and frequentist inf...
The choice of prior distributions for the variances can be important and quite difficult in Bayesian...
In Bayesian statistics, if the distribution of the data is unknown, then each plausible distribution...
In Bayesian statistics, if the distribution of the data is unknown, then each plausible distribution...
In Bayesian statistics, if the distribution of the data is unknown, then each plausible distribution...
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...
The issue of setting prior distributions on model parameters, or to attribute uncertainty for model ...
We consider a multivariate model with independent marginals as a benchmark for a generic multivariat...
We consider a multivariate model with independent marginals as a benchmark for a generic multivariat...
The autoregressive (AR) process of order p(AR(p)) is a central model in time series analysis. A Baye...
In the present paper, we describe and explore new methods for constructing joint penalised complexit...
In contrast to a posterior analysis given a particular sampling model, posterior model probabilities...
Priors are important for achieving proper posteriors with physically meaningful covariance structure...
Lack of independence in the residuals from linear regression motivates the use of random effect mode...
We investigate the choice of default priors for use with likelihood for Bayesian and frequentist inf...
The choice of prior distributions for the variances can be important and quite difficult in Bayesian...
In Bayesian statistics, if the distribution of the data is unknown, then each plausible distribution...
In Bayesian statistics, if the distribution of the data is unknown, then each plausible distribution...
In Bayesian statistics, if the distribution of the data is unknown, then each plausible distribution...