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Optimal Forecasting of Noncausal Autoregressive Time Series

Authors :
Markku Lanne
Pentti Saikkonen
Jani Luoto
Department of Political and Economic Studies (2010-2017)
Helsinki Center of Economic Research (HECER) 2010-2012
Department of Mathematics and Statistics
Financial and Macroeconometrics
Publication Year :
2010

Abstract

In this paper, we propose a simulation-based method for computing point and density forecasts for univariate noncausal and non-Gaussian autoregressive processes. Numerical methods are needed for forecasting such time series because the prediction problem is generally nonlinear and therefore no analytic solution is available. According to a limited simulation experiment, the use of a correct noncausal model can lead to substantial gains in forecast accuracy over the corresponding causal model. An empirical application to US inflation demonstrates the importance of allowing for noncausality in improving point and density forecasts.

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....9c1875bef12421031b55dea0598d3fe9