Varying coefficient models are useful in applications where the effect of the covariate might depend on some other covariate such as time or location. Various applications of these models often give rise to case-specific prior distributions for the parameter(s) describing how much the coefficients vary. In this work, we introduce a unified view of varying coefficients models, arguing for a way of specifying these prior distributions that are coherent across various applications, avoid overfitting and have a coherent interpretation. We do this by considering varying coefficients models as a flexible extension of the natural simpler model and capitalising on the recently proposed framework of penalized complexity (PC) priors. We illustrate ou...
This paper introduces a new class of spatio-temporal models for measurements belonging to the expone...
Abstract. Bayesian robustness modelling using heavy-tailed distributions provides a flexible approac...
In this paper, we introduce a new concept for constructing prior distributions. We exploit the natur...
Varying coefficient models are useful in applications where the effect of the covariate might depend...
Varying coefficient models arise naturally as a flexible extension of a simpler model where the effe...
In spatiotemporal analysis, the effect of a covariate on the outcome usually varies across areas and...
Doctor of PhilosophyDepartment of StatisticsMajor Professor Not ListedIn many economic and geographi...
Generalized linear mixed models (GLMM) represent a flexible tool to model environmental data which a...
We propose a novel varying coefficient model (VCM), called principal varying coefficient model (PVCM...
This study develops a spatially varying coefficient model by extending the random effects eigenvecto...
The varying coefficient model is a useful alternative to the classical linear model, since the forme...
none3siopenVentrucci, M; Franco-Villoria, M; Rue, HVentrucci, M; Franco-Villoria, M; Rue,
© 2009 The Royal Statistical Society and Blackwell Publishing Ltd.We propose an adaptive varying-coe...
Lack of independence in the residuals from linear regression motivates the use of random effect mode...
The issue of setting prior distributions on model parameters, or to attribute uncertainty for model ...
This paper introduces a new class of spatio-temporal models for measurements belonging to the expone...
Abstract. Bayesian robustness modelling using heavy-tailed distributions provides a flexible approac...
In this paper, we introduce a new concept for constructing prior distributions. We exploit the natur...
Varying coefficient models are useful in applications where the effect of the covariate might depend...
Varying coefficient models arise naturally as a flexible extension of a simpler model where the effe...
In spatiotemporal analysis, the effect of a covariate on the outcome usually varies across areas and...
Doctor of PhilosophyDepartment of StatisticsMajor Professor Not ListedIn many economic and geographi...
Generalized linear mixed models (GLMM) represent a flexible tool to model environmental data which a...
We propose a novel varying coefficient model (VCM), called principal varying coefficient model (PVCM...
This study develops a spatially varying coefficient model by extending the random effects eigenvecto...
The varying coefficient model is a useful alternative to the classical linear model, since the forme...
none3siopenVentrucci, M; Franco-Villoria, M; Rue, HVentrucci, M; Franco-Villoria, M; Rue,
© 2009 The Royal Statistical Society and Blackwell Publishing Ltd.We propose an adaptive varying-coe...
Lack of independence in the residuals from linear regression motivates the use of random effect mode...
The issue of setting prior distributions on model parameters, or to attribute uncertainty for model ...
This paper introduces a new class of spatio-temporal models for measurements belonging to the expone...
Abstract. Bayesian robustness modelling using heavy-tailed distributions provides a flexible approac...
In this paper, we introduce a new concept for constructing prior distributions. We exploit the natur...