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MARTINGALE LIMIT THEOREM REVISITED AND NONLINEAR COINTEGRATING REGRESSION

Published online by Cambridge University Press:  29 November 2013

Qiying Wang*
Affiliation:
University of Sydney
*
*Address correspondence to Qiying Wang, School of Mathematics and Statistics, The University of Sydney, NSW 2006, Australia; e-mail: [email protected].

Abstract

For a certain class of martingales, convergence to a mixture of normal distributions is established under convergence in distribution for the conditional variance. This is less restrictive in comparison with the classical martingale limit theorem, where one generally requires convergence in probability. The extension partially removes a barrier in the applications of the classical martingale limit theorem to nonparametric estimation and inference with nonstationarity and enhances the effectiveness of the classical martingale limit theorem as one of the main tools to investigate asymptotics in statistics, econometrics, and other fields. The main result is applied to investigate limit behavior of the conventional kernel estimator in a nonlinear cointegrating regression model, which improves existing works in the literature.

Type
ARTICLES
Copyright
Copyright © Cambridge University Press 2013 

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References

REFERENCES

Aldous, D. (1989) Stopping times and tightness. II. Annals of Probability 17, 586595.CrossRefGoogle Scholar
Billingsley, P. (1968) Convergence of Probability Measures. Wiley.Google Scholar
Borovskikh, Y.V. & Korolyuk, V.S. (1997) Martingale Approximation. VSP.CrossRefGoogle Scholar
Cai, Z., Li, Q., & Park, J.Y. (2009) Functional-coefficient models for non-stationary time series data. Journal of Econometrics 148, 101113.CrossRefGoogle Scholar
Choi, I. & Saikkonen, P. (2010) Tests for nonlinear cointegration. Econometric Theory 26, 682709.CrossRefGoogle Scholar
Csörgö, M. & Révész, P. (1981) Strong Approximations in Probability and Statistics. Probability and Mathematical Statistics. Academic Press.Google Scholar
Gao, J.K. King, Lu, Z., & Tjøstheim, D. (2009a) Non-parametric specification testing for nonlinear time series with nonstationarity. Econometric Theory 25, 18691892.Google Scholar
Gao, J., King, K., Lu, Z., & Tjøstheim, D. (2009b) Specification testing in nonlinear and non-stationary time series autoregression. Annals of Statistics. 37, 38933928.CrossRefGoogle Scholar
Gasquet, C. & Witomski, P. (1999) Fourier Analysis and Applications. Springer.Google Scholar
Geman, D. & Horowitz, J. (1980) Occupation densities. Annals of Probability 8, 167.CrossRefGoogle Scholar
Guerre, E. (2004) Design-adaptive pointwise non-parametric regression estimation for recurrent Markov time series. Unpublished manuscript.CrossRefGoogle Scholar
Hall, P. (1977) Martingale invariance principles. Annals of Probability 5, 875887.CrossRefGoogle Scholar
Hall, P. & Heyde, C.C. (1980) Martingale limit theory and its application. Probability and Mathematical Statistics. Academic Press.Google Scholar
Hansen, B.E. (1992) Convergence to stochastic integrals for dependent heterogeneous processes. Econometric Theory 8, 489500.CrossRefGoogle Scholar
Ibragimov, R. & Phillips, P.C.B. (2008) Regression asymptotics using martingale convergence methods. Econometric Theory 24 (4) 888947.CrossRefGoogle Scholar
Jacod, J. & Shiryaev, A.N. (2003) Limit theorems for stochastic processes, 2nd ed. Springer-Verlag.CrossRefGoogle Scholar
Jeganathan, P. (1982) A solution of the martingale central limit problem, Part I. Sankhya 44, 299318.Google Scholar
Jeganathan, P. (2006) Convergence in distribution of row sum processes to mixtures of additive processes. Unpublished manuscript.Google Scholar
Karlsen, H.A., Myklebust, T., & Tjøstheim, D. (2007) Non-parametric estimation in a nonlinear cointegration model. Annals Statistics 35, 252299.CrossRefGoogle Scholar
Karlsen, H.A. & Tjøstheim, D. (2001) Non-parametric estimation in null recurrent time series. Annals Statistics 29, 372416.CrossRefGoogle Scholar
Kasahara, Y. & Maejima, M. (1988) Weighted sums of i.i.d. random variables attracted to integrals of stable processes. Probability Theory and Related Fields 78, 7596.CrossRefGoogle Scholar
Kasparis, I. (2008) Detection on functional form Misspecification in cointegrating relations. Econometric Theory 24, 13731403.CrossRefGoogle Scholar
Kasparis, I. (2011) Functional form misspecification in regressions with a unit root. Econometric Theory 27, 285311.CrossRefGoogle Scholar
Kasparis, I. & Phillips, P.C.B. (2009) Dynamic Misspecification in Non-parametric Cointegrating Regression. Working paper, Yale University.CrossRefGoogle Scholar
Kurtz, T.G. & Protter, P. (1991) Weak limit theorems for stochastic integrals and stochastic differential equations. Annals of Probability 19, 10351070.CrossRefGoogle Scholar
Marmer, V. (2008) Nonlinearity, nonstationarity, and spurious forecasts. Journal of Econometrics 142, 127.CrossRefGoogle Scholar
Park, J.Y. & Phillips, P.C.B. (1999) Asymptotics for nonlinear transformation of integrated time series. Econometric Theory 15, 269298.CrossRefGoogle Scholar
Park, J.Y. & Phillips, P.C.B. (2001) Nonlinear regressions with integrated time series. Econometrica 69, 117161.CrossRefGoogle Scholar
Phillips, P.C.B. & Park, J.Y. (1998) Non-stationary Density Estimation and Kernel Autoregression. Cowles Foundation Discussion Paper No. 1181.Google Scholar
Prigent, J-L. (2003) Weak Convergence of Financial Markets. Springer Finance. Springer-Verlag.CrossRefGoogle Scholar
Schienle, M. (2008) Non-parametric Non-stationary Regression. Ph.D. Thesis, University of Mannheim.Google Scholar
Stein, E.M. & Shakarchi, R. (2005) Real Analysis: Measure Theory, Integration, and Hilbert Spaces. Princeton University Press.CrossRefGoogle Scholar
Wang, Q., Lin, Y.-X., & Gulati, C.M. (2003) Asymptotics for general fractionally integrated processes with applications to unit root tests. Econometric Theory 19, 143164.CrossRefGoogle Scholar
Wang, Q. & Phillips, P.C.B. (2009a) Asymptotic theory for local time density estimation and non-parametric cointegrating regression. Econometric Theory 25, 710738.CrossRefGoogle Scholar
Wang, Q. & Phillips, P.C.B. (2009b) Structural non-parametric cointegrating regression. Econometrica. 77, 19011948.Google Scholar
Wang, Q. & Phillips, P.C.B. (2011) Asymptotic theory for zero energy functionals with non-parametric regression applications. Econometric Theory 2, 235359.CrossRefGoogle Scholar
Wang, Q. & Phillips, P.C.B. (2012) A specification test for nonlinear non-stationary models. The Annals of Statistics 40, 727758.CrossRefGoogle Scholar
Wu, W.B. & Woodroofe, M. (2004) Martingale approximations for sums of stationary processes. Annals of Probability 32, 16741690.CrossRefGoogle Scholar