Asymptotic and bootstrap prediction regions for vector autoregression

Asymptotic and bootstrap prediction regions for vector autoregression

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Article ID: iaor20003860
Country: Netherlands
Volume: 15
Issue: 4
Start Page Number: 393
End Page Number: 403
Publication Date: Oct 1999
Journal: International Journal of Forecasting
Authors:
Abstract:

Small sample properties of asymptotic and bootstrap prediction regions for vector autoregressive models are evaluated and compared. Monte Carlo simulations reveal that the bootstrap prediction region based on the percentile-t method outperforms its asymptotic and other bootstrap alternatives in small samples. It provides the most accurate assessment of future uncertainty under both normal and non-normal innovations. The use of an asymptotic prediction region may result in a serious under-estimation of future uncertainty when the sample size is small. When the model is near non-stationary, the use of the bootstrap region based on the percentile-t method is recommended, although extreme care should be taken when it is used for medium to long-term forecasting.

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