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Time Series Forecasting Using a Mixture of Stationary and Nonstationary Predictors

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posted on 2022-11-10, 03:43 authored by Sium Bodha Hannadige, Jiti Gao, Mervyn J Silvapulle, Param Silvapulle
We develop a method for constructing prediction intervals for a nonstationary variable, such as GDP. The method uses a factor augmented regression [FAR] model. The predictors in the model includes a small number of factors generated to extract most of the information in a set of panel data on a large number of macroeconomic variables considered to be potential predictors. The novelty of this paper is that it provides a method and justification for a mixture of stationary and nonstationary factors as predictors in the FAR model; we refer to this as mixture-FAR method. This method is important because typically such a large set of panel data, for example the FRED-MD, is likely to contain a mixture of stationary and nonstationary variables. In our simulation study, we observed that the proposed mixture-FAR method performed better than its competitor that requires all the predictors to be nonstationary; the MSE of prediction was at least 33% lower for mixture-FAR. Using the data in FRED-QD for the US, we evaluated the aforementioned methods for forecasting the nonstationary variables, GDP and Industrial Production. We observed that the mixture-FAR method performed better than its competitors.

History

Classification-JEL

C22, C33, C38, C53

Creation date

2021-04-01

Working Paper Series Number

6/21

Length

67 pp

File-Format

application/pdf

Handle

RePEc:msh:ebswps:2021-6

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