We apply a recent methodology, Bayesian stochastic model specification search (SMSS), for the selection of the unobserved components (level, slope, seasonal cycles, trading days effects) that are stochastically evolving over time. SMSS hinges on two basic ingredients: the non-centered representation of the unobserved components and the reparameterization of the hyperparameters representing standard deviations as regression parameters with unrestricted support. The choice of the prior and the conditional independence structure of the model enable the definition of a very efficient MCMC estimation strategy based on Gibbs sampling. We illustrate that the methodology can be quite successfully applied to discriminate between stochastic and dete...
We introduce a model for the analysis of intra-day volatility based on unobserved components. The st...
Abstract: The selection problem among models for the seasonal behavior in time series is considered....
Book cover Mathematical and Statistical Methods for Actuarial Sciences and Finance pp 79–85Cite as ...
We apply a recent methodology, Bayesian stochastic model specification search (SMSS), for the select...
An important issue in modelling economic time series is whether key unobserved components representi...
An important issue in modelling economic time series is whether key unobserved components representi...
We apply a recently proposed Bayesian model selection technique, known as stochastic model specifica...
We apply a recently proposed Bayesian model selection technique, known as stochastic model specifica...
A recently proposed Bayesian model selection technique, stochastic model specification search, is ca...
This chapter reviews the principal methods used by researchers when forecasting seasonal time series...
A fully Bayesian analysis of seasonal and nonseasonal forms of nonstationarity is presented. The the...
Model specification for state space models is a difficult task as one has to decide which components...
We develop tests for seasonal unit roots for daily data by extending the methodology of Hylleberg et...
The correct modelling of long- and short-term seasonality is a very interesting issue. The choice be...
This article proposes an alternative methodology for modeling and forecasting seasonal series. The a...
We introduce a model for the analysis of intra-day volatility based on unobserved components. The st...
Abstract: The selection problem among models for the seasonal behavior in time series is considered....
Book cover Mathematical and Statistical Methods for Actuarial Sciences and Finance pp 79–85Cite as ...
We apply a recent methodology, Bayesian stochastic model specification search (SMSS), for the select...
An important issue in modelling economic time series is whether key unobserved components representi...
An important issue in modelling economic time series is whether key unobserved components representi...
We apply a recently proposed Bayesian model selection technique, known as stochastic model specifica...
We apply a recently proposed Bayesian model selection technique, known as stochastic model specifica...
A recently proposed Bayesian model selection technique, stochastic model specification search, is ca...
This chapter reviews the principal methods used by researchers when forecasting seasonal time series...
A fully Bayesian analysis of seasonal and nonseasonal forms of nonstationarity is presented. The the...
Model specification for state space models is a difficult task as one has to decide which components...
We develop tests for seasonal unit roots for daily data by extending the methodology of Hylleberg et...
The correct modelling of long- and short-term seasonality is a very interesting issue. The choice be...
This article proposes an alternative methodology for modeling and forecasting seasonal series. The a...
We introduce a model for the analysis of intra-day volatility based on unobserved components. The st...
Abstract: The selection problem among models for the seasonal behavior in time series is considered....
Book cover Mathematical and Statistical Methods for Actuarial Sciences and Finance pp 79–85Cite as ...