A Bayesian approach is used to derive constrained and unconstrained forecasts in an autoregressive time series model. Both are obtained by formulating an AR(p) model in such a way that it is possible to compute numerically the predictive distribution for any number of forecasts. The types of constraints considered are that a linear combination of the forecasts equals a given value. This kind of restriction is applied to forecasting quarterly values whose sum must be equal to a given annual value. Constrained forecasts are generated by conditioning on the predictive distribution of unconstrained forecasts. The procedures are applied to the Quarterly GNP of Mexico, to a simulated series from an AR(4) process and to the Quarterly Unemployment Rate for the United States.
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Univ Sydney, Sydney Sch Vet Sci, Sydney, NSW, AustraliaUniv Sydney, Sydney Sch Vet Sci, Sydney, NSW, Australia
Ward, Michael P.
Iglesias, Rachel M.
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Australian Govt Dept Agr Water & Environm, Canberra, ACT, AustraliaUniv Sydney, Sydney Sch Vet Sci, Sydney, NSW, Australia
Iglesias, Rachel M.
Brookes, Victoria J.
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Charles Sturt Univ, Fac Sci, Sch Anim & Vet Sci, Wagga Wagga, NSW, Australia
Charles Sturt Univ, NSW Dept Primary Ind, Graham Ctr Agr Innovat, Wagga Wagga, NSW, AustraliaUniv Sydney, Sydney Sch Vet Sci, Sydney, NSW, Australia