In this article we consider the problem of prediction for a general class of Gaussian models, which includes, among\ud others, autoregressive moving average time-series models, linear Gaussian state space models and Gaussian\ud Markov random fields. Using an idea presented in Sjostedt-De Luna and Young (2003), in the context of spatial\ud statistics, we discuss a method for obtaining prediction limits for a future random variable of interest, taking into\ud account the uncertainty introduced by estimating the unknown parameters. The proposed prediction limits can be\ud viewed as a modification of the estimative prediction limit, with unconditional, and eventually conditional,\ud coverage error of smaller asymptotic order. The modifying term...
This paper deals with prediction of controlled autoregressive processes with additive white Gaussian...
Redazioni Provvisorie 1.2009, Dipartimento di Statistica, Universit\ue0 Ca' Foscari di Venezi
Prediction intervals in State Space models can be obtained by assuming Gaussian innovations and usi...
In this article we consider the problem of prediction for a general class of Gaussian models, which ...
In this paper we consider the problem of generating multi-period predictions from two simple dynamic...
This article concerns the construction of prediction intervals for time series models. The estimativ...
We consider the problem of multi-step ahead prediction in time series analysis using the non-paramet...
Prediction intervals in state space models can be obtained by assuming Gaussian innovations and usin...
Prediction intervals in State Space models can be obtained by assuming Gaussian innovations and usin...
Models are used by artificial agents to make predictions about the future; agents then use these pre...
A two-stage method for the parameter estimation of Gaussian autoregressive models is proposed. The p...
It is well known that the so called plug-in prediction intervals for autoregressive processes, with...
This paper proposes a method to construct well-calibrated frequentist prediction regions, with parti...
We derive generalization error bounds — bounds on the expected inaccuracy of the predictions — for t...
We discuss a robust solution to the problem of prediction. Extending Barndorff-Nielsen and Cox [1996...
This paper deals with prediction of controlled autoregressive processes with additive white Gaussian...
Redazioni Provvisorie 1.2009, Dipartimento di Statistica, Universit\ue0 Ca' Foscari di Venezi
Prediction intervals in State Space models can be obtained by assuming Gaussian innovations and usi...
In this article we consider the problem of prediction for a general class of Gaussian models, which ...
In this paper we consider the problem of generating multi-period predictions from two simple dynamic...
This article concerns the construction of prediction intervals for time series models. The estimativ...
We consider the problem of multi-step ahead prediction in time series analysis using the non-paramet...
Prediction intervals in state space models can be obtained by assuming Gaussian innovations and usin...
Prediction intervals in State Space models can be obtained by assuming Gaussian innovations and usin...
Models are used by artificial agents to make predictions about the future; agents then use these pre...
A two-stage method for the parameter estimation of Gaussian autoregressive models is proposed. The p...
It is well known that the so called plug-in prediction intervals for autoregressive processes, with...
This paper proposes a method to construct well-calibrated frequentist prediction regions, with parti...
We derive generalization error bounds — bounds on the expected inaccuracy of the predictions — for t...
We discuss a robust solution to the problem of prediction. Extending Barndorff-Nielsen and Cox [1996...
This paper deals with prediction of controlled autoregressive processes with additive white Gaussian...
Redazioni Provvisorie 1.2009, Dipartimento di Statistica, Universit\ue0 Ca' Foscari di Venezi
Prediction intervals in State Space models can be obtained by assuming Gaussian innovations and usi...