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Forecasting performance of multivariate time series models with full and reduced rank: an empirical examination
Authors:Zijun  David A  
Institution:a Private Enterprise Research Center, Texas A&M University, Academic Building West, Room 3028, College Station, TX 77843-4231, USA;b Department of Agricultural Economics, Texas A&M University, College Station, TX 77843-2124, USA
Abstract:Since Quenouille's influential work on multiple time series, much progress has been made towards the goal of parameter reduction and model fit. Relatively less attention has been paid to the systematic evaluation of out-of-sample forecast performance of multivariate time series models. In this paper, we update the hog data set studied by Quenouille (and other researchers who followed him). We re-estimate his model with extended observations (1867–1966), and generate recursive one- to four-steps-ahead forecasts for the period of 1967 through 2000. These forecasts are compared to forecasts from an unrestricted vector autoregression, a reduced rank regression model, an index model and a cointegration-based error correction model. The error correction model that takes into account both nonstationarity of the data and rank reduction performs best at all four forecasting horizons. However, differences among competing models are statistically insignificant in most cases. No model consistently encompasses the others at all four horizons.
Keywords:Reduced rank regressions  Forecast evaluations  Forecast encompassing
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