Economic variables such as stock market indices, interest rates, and national output measures contain cyclical components. Forecasting methods excluding these cyclical components yield inaccurate out-of-sample forecasts. Accordingly, a three-stage procedure is developed to estimate a vector autoregression (VAR) with cyclical components. A Monte Carlo simulation shows the procedure estimates the parameters accurately. Subsequently, a VAR with cyclical components improves the root-mean-square error of out-of-sample forecasts by 50% for a stock market model with macroeconomic variables.
CITATION STYLE
Szulczyk, K. R., & Sadique, S. (2018). Using Cyclical Components to Improve the Forecasts of the Stock Market and Macroeconomic Variables. Journal of Modern Applied Statistical Methods, 17(1), 2–23. https://doi.org/10.22237/jmasm/1539003896
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