Hostname: page-component-cd9895bd7-q99xh Total loading time: 0 Render date: 2024-12-27T18:21:01.608Z Has data issue: false hasContentIssue false

Asymptotic Normality of the Least-Squares Estimates for Higher Order Autoregressive Integrated Processes with Some Applications

Published online by Cambridge University Press:  11 February 2009

In Choi
Affiliation:
The Ohio State University

Abstract

Using the asymptotic normality of the least-squares estimates for the autoregressive (AR) process with real, positive unit roots and at least one stable root, we consider the asymptotic distributions of the Wald and t ratio tests on AR coefficients. In addition, we propose a method of constructing confidence intervals for the sum of AR coefficients possibly in the presence of a unit root. Using simulation methods, we compare the finite-sample cumulative distributions of the t ratios for individual autoregressive coefficients with those of standard normal distributions, and investigate the finite-sample performance of our confidence intervals and t ratios. Our simulation results show that the t ratios for nonstationary processes converge to a standard normal distribution more slowly than those for stationary processes. Further, the confidence intervals are shown to work reasonably well in moderately large samples, but they display unsatisfactory performance at small sample sizes.

Type
Articles
Copyright
Copyright © Cambridge University Press 1993

Access options

Get access to the full version of this content by using one of the access options below. (Log in options will check for institutional or personal access. Content may require purchase if you do not have access.)

References

1.Anderson, T.W.The Statistical Analysis of Time Series. New York: Wiley, 1971.Google Scholar
2.Andrews, D.W.K.Exactly unbiased estimation of first order autoregressive/unit root models. Cowles Foundation Discussion Paper No. 975, 1991.Google Scholar
3.Chan, N.H.Asymptotic inference for unstable autoregressive time series with drifts. Journal of Statistical Planning and Inference 23 (1989): 301312.CrossRefGoogle Scholar
4.Chan, N.H. & Wei, C.Z.. Limiting distributions of least squares estimates of unstable autoregressive processes. Annals of Statistics 16 (1988): 367401.CrossRefGoogle Scholar
5.Choi, I.Testing for a unit root in ARIMA(p,1,q) models by the GLS method. Manuscript, The Ohio State University, 1990.Google Scholar
6.Choi, I.Spurious regressions and residual based tests for cointegration when regressors are cointegrated. Manuscript, The Ohio State University, 1991.Google Scholar
7.Choi, I. & Phillips, P.C.B.. Testing for a unit root by generalized least squares methods in the time and frequency domains. Cowles Foundation Discussion Paper, No. 899, 1988.Google Scholar
8.Dickey, D.A. & Fuller, W.A.. Distributions of estimators for autoregressive time series with a unit root. Journal of American Statistical Association 74 (1979): 427431.Google Scholar
9.Evans, G.B.A. & Savin, N.E.. Testing for unit roots: 1. Econometrica 49 (1981): 753779.CrossRefGoogle Scholar
10.Evans, G.B.A. & Savin, N.E.. The calculation of the limiting distribution of the least squares estimator of the parameter in a random walk model. Annals of Statistics 9 (1981): 11141118.CrossRefGoogle Scholar
11.Evans, G.B.A. & Savin, N.E.. Testing for unit roots. 2. Econometrica 52 (1984): 12411269.CrossRefGoogle Scholar
12.Fuller, W.A.Introduction to Statistical Time Series. New York: Wiley, 1976.Google Scholar
13.Fuller, W.A. Nonstationary autoregressive time series. In Handbook of Statistics, vol. 5, pp. 123. Amsterdam: North-Holland, 1984.Google Scholar
14.Granger, C.W.J.Models that generate trends. Journal of Time Series Analysis 9 (1988): 329344.CrossRefGoogle Scholar
15.Hall, A.Testing for a unit root in the presence of moving average errors. Biometrika 76 (1989): 4956.CrossRefGoogle Scholar
16.Hall, A.Testing for a unit root in time series with pretest data based model selection. Discussion paper, North Carolina State University, 1991.Google Scholar
17.Hall, P. & Heyde, C.C.. Martingale Limit Theory and Its Application. New York: Academic Press, 1980.Google Scholar
18.Hannan, E. J. & Deistler, M.. The Statistical Theory of Linear Systems. New York: Wiley, 1988.Google Scholar
19.Hurvich, C.M. & Tsai, C.-L.. Regression and time series model selection in small samples. Biometrika 76 (1989): 297307.CrossRefGoogle Scholar
20.Kailath, T.Linear System. Englewood Cliffs, NJ: Prentice-Hall, 1980.Google Scholar
21.Kawashima, H.Parameter estimation of autoregressive integrated processes by least squares. Annals of Statistics 8 (1980): 423435.CrossRefGoogle Scholar
22.Nabeya, S. & Tanaka, K.. A general approach to the limiting distribution of estimators in time series regression with nonstable autoregressive errors. Econometrica 58 (1990): 145164.CrossRefGoogle Scholar
23.Nelson, C. & Plosser, C.. Trends and random walks in macroeconomic time series: Some evidence and implications. Journal of Monetary Economics 10 (1982): 139162.CrossRefGoogle Scholar
24.Pantula, S. & Hall, A.. Testing for unit roots in autoregressive moving average models: An instrumental variable approach. Journal of Econometrics 48 (1991): 325354.CrossRefGoogle Scholar
25.Park, J.Y. & Phillips, P.C.B.. Statistical inference in regressions with integrated processes: Part 2. Econometric Theory 5 (1989): 95131.CrossRefGoogle Scholar
26.Perron, P. & Phillips, P.C.B.. Does GNP have a unit root? Economic Letters 23 (1987): 139145.CrossRefGoogle Scholar
27.Phillips, P.C.B.Approximations to some finite sample distributions associated with a firstorder stochastic difference equation. Econometrica 45 (1977): 463485.CrossRefGoogle Scholar
28.Phillips, P.C.B.Time series regression with a unit root. Econometrica 55 (1987): 277301.CrossRefGoogle Scholar
29.Phillips, P.C.B. & Ploberger, W.. Posterior odds testing for a unit root with data-based model selection. Cowles Foundation Discussion Paper, 1992.Google Scholar
30.Rao, M.M.Asymptotic distribution of an estimator of the boundary parameter of an unstable process. Annals of Statistics 6 (1978): 185190.CrossRefGoogle Scholar
31.Rao, M.M.Correction to asymptotic distribution of an estimator of the boundary parameter of an unstable process. Annals of Statistics 8 (1980): 1403.CrossRefGoogle Scholar
32.Said, E.S. & Dickey, D.A.. Testing for unit roots in autoregressive moving average models of unknown order. Biometrika 71 (1984): 599607.CrossRefGoogle Scholar
33.Said, E.S. & Dickey, D.A.. Hypothesis testing in ARIMA(p,l,q) models. Journal of the American Statistical Association 80 (1985): 369374.CrossRefGoogle Scholar
34.Sims, C.Bayesian skepticism on unit root econometrics. Journal of Economic Dynamic and Control 12 (1988): 463474.CrossRefGoogle Scholar
35.Sims, C., Stock, J.H. & Watson, M.W.. Inference in linear time series models with some unit roots. Econometrica 58 (1990): 113144.CrossRefGoogle Scholar
36.Stigum, B.P.Asymptotic properties of dynamic stochastic parameter estimates (III). Journal of Multivariate Analysis 4 (1974): 351381.CrossRefGoogle Scholar
37.Stock, J.H.Confidence intervals for the largest autoregressive root in US macroeconomic time series. Manuscript, University of California-Berkeley, 1990.Google Scholar
38.Tiao, G.C. & Tsay, R.S.. Consistency properties of least squares estimates of autoregressive parameters in ARMA models. Annals of Statistics 11 (1983): 856871.CrossRefGoogle Scholar
39.Toda, H.Y. & Phillips, P.C.B.. Vector autoregression and causality. Cowles Foundation Discussion Paper No. 977, 1991.Google Scholar
40.Tsay, R.S. & Tiao, G.C.. Asymptotic properties of multivariate nonstationary processes with applications to autoregressions. Annals of Statistics 18 (1990): 220250.CrossRefGoogle Scholar
41.West, K.D.Asymptotic normality, when regressors have a unit root. Econometrica 56 (1988): 13971418.CrossRefGoogle Scholar
42.White, J.The limiting distribution of the serial correlation coefficients in the explosive case. Annals of Mathematical Statistics 29 (1958): 11881197.CrossRefGoogle Scholar