Non-Gaussian Conditional Linear AR(1) Models |
| |
Authors: | Gary K. Grunwald,Rob J. Hyndman,Leanna Tedesco,& Richard L. Tweedie |
| |
Affiliation: | Dept of Preventive Medicine and Biometrics, University of Colorado Health Sciences Center, Denver, CO, USA,;Dept of Econometrics and Business Statistics, Monash University, Clayton, VIC, Australia.,;Sydney, NSW, Australia,;School of Public Health, University of Minneapolis, USA |
| |
Abstract: | This paper gives a general formulation of a non-Gaussian conditional linear AR(1) model subsuming most of the non-Gaussian AR(1) models that have appeared in the literature. It derives some general results giving properties for the stationary process mean, variance and correlation structure, and conditions for stationarity. These results highlight similarities with and differences from the Gaussian AR(1) model, and unify many separate results appearing in the literature. Examples illustrate the wide range of properties that can appear under the conditional linear autoregressive assumption. These results are used in analysing three real datasets, illustrating general methods of estimation, model diagnostics and model selection. In particular, the theoretical results can be used to develop diagnostics for deciding if a time series can be modelled by some linear autoregressive model, and for selecting among several candidate models. |
| |
Keywords: | autoregression data analysis exponential time series Gamma time series non-Gaussian time series Poisson time series. |
|
|