Some Invariance Principles and Central Limit Theorems for Dependent Heterogeneous Processes
- 1 August 1988
- journal article
- research article
- Published by Cambridge University Press (CUP) in Econometric Theory
- Vol. 4 (2) , 210-230
- https://doi.org/10.1017/s0266466600012032
Abstract
Building on work of McLeish, we present a number of invariance principles for doubly indexed arrays of stochastic processes which may exhibit considerable dependence, heterogeneity, and/or trending moments. In particular, we consider possibly time-varying functions of infinite histories of heterogeneous mixing processes and obtain general invariance results, with central limit theorems following as corollaries. These results are formulated so as to apply to economic time series, which may exhibit some or all of the features allowed in our theorems. Results are given for the case of both scalar and vector stochastic processes. Using an approach recently pioneered by Phillips, and Phillips and Durlauf, we apply our results to least squares estimation of unit root models.Keywords
This publication has 17 references indexed in Scilit:
- Understanding spurious regressions in econometricsPublished by Elsevier ,2002
- Asymptotic Expansions in Nonstationary Vector AutoregressionsEconometric Theory, 1987
- Least Squares Regression with Integrated or Dynamic Regressors under Weak Error AssumptionsEconometric Theory, 1987
- A nearly independent, but non-strong mixing, triangular arrayJournal of Applied Probability, 1985
- Non-strong mixing autoregressive processesJournal of Applied Probability, 1984
- Uniform Consistency of Kernel Estimators of a Regression Function Under Generalized ConditionsJournal of the American Statistical Association, 1983
- Uniform Consistency of Kernel Estimators of a Regression Function under Generalized ConditionsJournal of the American Statistical Association, 1983
- Functional Limit Theorems for Dependent VariablesThe Annals of Probability, 1978
- On the Invariance Principle for Nonstationary MixingalesThe Annals of Probability, 1977
- A Maximal Inequality and Dependent Strong LawsThe Annals of Probability, 1975