Modelling non-normal first-order autoregressive time series

Modelling non-normal first-order autoregressive time series

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Article ID: iaor19951544
Country: United Kingdom
Volume: 13
Issue: 4
Start Page Number: 369
End Page Number: 381
Publication Date: Aug 1994
Journal: International Journal of Forecasting
Authors:
Abstract:

This paper first reviews some non-normal stationary first-order autoregressive models. The models are constructed with a given marginal distribution (logistic, hyperbolic secant, exponential, Laplace, or gamma) and the requirement that the bivariate joint distribution of the geneated process must be sufficiently simple so that the parameter estimation and forecasting problems of the models can be addressed. A model-building approach that consists of model identification, estimation, diagnostic checking, and forecasting is then discussed for this class of models.

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