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Atribución-NoComercial-SinDerivadas 3.0 España
Abstract:
Prediction intervals in State Space models can be obtained by assuming Gaussian innovations and
using the prediction equations of the Kalman filter, where the true parameters are substituted by
consistent estimates. This approach has two limitations. First, Prediction intervals in State Space models can be obtained by assuming Gaussian innovations and
using the prediction equations of the Kalman filter, where the true parameters are substituted by
consistent estimates. This approach has two limitations. First, it does not incorporate the
uncertainty due to parameter estimation. Second, the Gaussianity assumption of future innovations
may be inaccurate. To overcome these drawbacks, Wall and Stoffer (2002) propose to obtain
prediction intervals by using a bootstrap procedure that requires the backward representation of
the model. Obtaining this representation increases the complexity of the procedure and limits its
implementation to models for which it exists. The bootstrap procedure proposed by Wall and
Stoffer (2002) is further complicated by fact that the intervals are obtained for the prediction errors
instead of for the observations. In this paper, we propose a bootstrap procedure for constructing
prediction intervals in State Space models that does not need the backward representation of the
model and is based on obtaining the intervals directly for the observations. Therefore, its
application is much simpler, without loosing the good behavior of bootstrap prediction intervals.
We study its finite sample properties and compare them with those of the standard and the Wall
and Stoffer (2002) procedures for the Local Level Model. Finally, we illustrate the results by
implementing the new procedure to obtain prediction intervals for future values of a real time
series.[+][-]