Efficiency Gains from Quasi-Differencing Under Nonstationarity
A famous theorem on trend removal by OLS regression (usually attributed to Grenander and Rosenblatt, 1957) gave conditions for the asymptotic equivalence of GLS and OLS in deterministic trend extraction. When a time series has trend components that are stochastically nonstationary, this asymptotic equivalence no longer holds. We consider models with integrated and near-integrated error processes where this asymptotic equivalence breaks down. In such models, the advantages of GLS can be achieved through quasi-differencing and we give an asymptotic theory of the relative gains that occur in deterministic trend extraction in such cases. Some differences between models with and without intercepts are explored.
CFP 936. Published in P.M. Robinson and M. Rosenblatt, eds., Athens Conference on Applied Probability and Time Series, Vol. II, 1996, pp. 300-314 The price is None Number 1134 14 pages