This paper concerns the specification of multivariate prediction regions which may be useful in time series applications whenever we aim at considering not just one single forecast but a group of consecutive forecasts. We review a general result on improved multivariate prediction and we use it in order to calculate conditional prediction intervals for Markov process models so that the associated coverage probability turns out to be close to the target value. This improved solution is asymptotically superior to the estimative one, which is simpler but it may lead to unreliable predictive conclusions. An application to general autoregressive models is presented, focusing in particular on AR and ARCH models
AbstractConsider the stochastic processes X1, X2,… and Λ1, Λ2,… where the X process can be thought o...
Motivated by interval/region prediction in nonlinear time series, we propose a minimum volume predic...
This paper deals with simultaneous prediction for time series models. In particular, it presents a ...
The specification of multivariate prediction regions, having coverage probability closed to the targ...
This article concerns the construction of prediction intervals for time series models. The estimativ...
The problem of prediction is considered in a multidimensional setting. Extending an idea presented b...
Two new methods for improving prediction regions in the context of vector autoregressive (VAR) model...
The theory and methodology of obtaining bootstrap prediction intervals for univariate time series us...
This paper deals with simultaneous prediction for time series models. In particular, it presents a s...
A longstanding puzzle in macroeconomic forecasting has been that a wide varietyof multivariate model...
This paper presents asymptotically optimal prediction intervals and prediction regions. The predicti...
Suppose that a time series model is fitted. It is likely that the fitted model is not the true model...
In this article we consider the problem of prediction for a general class of Gaussian models, which ...
AbstractSuppose the stationary r-dimensional multivariate time series {yt} is generated by an infini...
AbstractConsider the stochastic processes X1, X2,… and Λ1, Λ2,… where the X process can be thought o...
Motivated by interval/region prediction in nonlinear time series, we propose a minimum volume predic...
This paper deals with simultaneous prediction for time series models. In particular, it presents a ...
The specification of multivariate prediction regions, having coverage probability closed to the targ...
This article concerns the construction of prediction intervals for time series models. The estimativ...
The problem of prediction is considered in a multidimensional setting. Extending an idea presented b...
Two new methods for improving prediction regions in the context of vector autoregressive (VAR) model...
The theory and methodology of obtaining bootstrap prediction intervals for univariate time series us...
This paper deals with simultaneous prediction for time series models. In particular, it presents a s...
A longstanding puzzle in macroeconomic forecasting has been that a wide varietyof multivariate model...
This paper presents asymptotically optimal prediction intervals and prediction regions. The predicti...
Suppose that a time series model is fitted. It is likely that the fitted model is not the true model...
In this article we consider the problem of prediction for a general class of Gaussian models, which ...
AbstractSuppose the stationary r-dimensional multivariate time series {yt} is generated by an infini...
AbstractConsider the stochastic processes X1, X2,… and Λ1, Λ2,… where the X process can be thought o...
Motivated by interval/region prediction in nonlinear time series, we propose a minimum volume predic...
This paper deals with simultaneous prediction for time series models. In particular, it presents a ...