A forecasting procedure for nonlinear autoregressive time series models

A forecasting procedure for nonlinear autoregressive time series models

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Article ID: iaor20081026
Country: United Kingdom
Volume: 24
Issue: 5
Start Page Number: 335
End Page Number: 351
Publication Date: Aug 2005
Journal: International Journal of Forecasting
Authors:
Abstract:

Forecasting for nonlinear time series is an important topic in time series analysis. Existing numerical algorithms for multi-step-ahead forecasting ignore accuracy checking, alternative Monte Carlo methods are also computationally very demanding and their accuracy is difficult to control too. In this paper a numerical forecasting procedure for nonlinear autoregressive time series models is proposed. The forecasting procedure can be used to obtain approximate m-step-ahead predictive probability density functions, predictive distribution functions, predictive mean and variance, etc. for a range of nonlinear autoregressive time series models. Examples in the paper show that the forecasting procedure works very well both in terms of the accuracy of the results and in the ability to deal with different nonlinear autoregressive time series models.

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