Hostname: page-component-cd9895bd7-jn8rn Total loading time: 0 Render date: 2024-12-23T14:34:18.594Z Has data issue: false hasContentIssue false

Projective Stochastic Equations and Nonlinear Long Memory

Published online by Cambridge University Press:  22 February 2016

Ieva Grublytė*
Affiliation:
Vilnius University
Donatas Surgailis*
Affiliation:
Vilnius University
*
Postal address: Institute of Mathematics and Informatics, Akademijos 4, LT-08663 Vilnius, Lithuania.
Postal address: Institute of Mathematics and Informatics, Akademijos 4, LT-08663 Vilnius, Lithuania.
Rights & Permissions [Opens in a new window]

Abstract

Core share and HTML view are not available for this content. However, as you have access to this content, a full PDF is available via the ‘Save PDF’ action button.

A projective moving average {Xt, t ∈ ℤ} is a Bernoulli shift written as a backward martingale transform of the innovation sequence. We introduce a new class of nonlinear stochastic equations for projective moving averages, termed projective equations, involving a (nonlinear) kernel Q and a linear combination of projections of Xt on ‘intermediate’ lagged innovation subspaces with given coefficients αi and βi,j. The class of such equations includes usual moving average processes and the Volterra series of the LARCH model. Solvability of projective equations is obtained using a recursive equality for projections of the solution Xt. We show that, under certain conditions on Q, αi, and βi,j, this solution exhibits covariance and distributional long memory, with fractional Brownian motion as the limit of the corresponding partial sums process.

Type
General Applied Probability
Copyright
© Applied Probability Trust 

References

Baillie, R. T. and Kapetanios, G. (2008). Nonlinear models for strongly dependent processes with financial applications. J. Econometrics 147, 6071.Google Scholar
Beran, J. (1994). Statistics for Long-Memory Processes (Monogr. Statist. Appl. Prob. 61). Chapman and Hall, New York.Google Scholar
Berkes, I. and Horváth, L. (2003). Asymptotic results for long memory LARCH sequences. Ann. Appl. Prob. 13, 641668.CrossRefGoogle Scholar
Davydov, Yu. A. (1970). The invariance principle for stationary process. Theory Prob. Appl. 15, 487498.Google Scholar
Dedecker, J. and Merlevède, F. (2003). The conditional central limit theorem in Hilbert spaces. Stoch. Process. Appl. 108, 229262.CrossRefGoogle Scholar
Dedecker, J. et al. (2007). Weak Dependence (Lecture Notes Statist. 190). Springer, New York.CrossRefGoogle Scholar
Doukhan, P., Lang, G. and Surgailis, D. (2012). A class of Bernoulli shifts with long memory: asymptotics of the partial sums process. Preprint. University of Cergy-Pontoise.Google Scholar
Doukhan, P., Oppenheim, G. and Taqqu, M. (eds) (2003). Theory and Applications of Long-Range Dependence. Birkhäuser, Boston, MA.Google Scholar
Giraitis, L. and Surgailis, D. (2002). ARCH-type bilinear models with double long memory. Stoch. Process. Appl. 100, 275300.CrossRefGoogle Scholar
Giraitis, L., Koul, H. L. and Surgailis, D. (2012). Large Sample Inference for Long Memory Processes. Imperial College Press, London.Google Scholar
Giraitis, L., Leipus, R. and Surgailis, D. (2009). ARCH(∞) models and long memory properties. In Handbook of Financial Time Series, eds Mikosch, T. et al., Springer, Berlin, pp. 7184.Google Scholar
Giraitis, L., Robinson, P. M. and Surgailis, D. (2000). A model for long memory conditional heteroskedasticity. Ann. Appl. Prob. 10, 10021024.Google Scholar
Giraitis, L., Leipus, R., Robinson, P. M. and Surgailis, D. (2004). LARCH, leverage, and long memory. J. Financial Econometrics 2, 177210.CrossRefGoogle Scholar
Hall, P. and Heyde, C. C. (1980). Martingale Limit Theory and Application. Academic Press, New York.Google Scholar
Hitczenko, P. (1990). Best constants in martingale version of Rosenthal's inequality. Ann. Prob. 18, 16561668.Google Scholar
Ho, H.-C. and Hsing, T. (1997). Limit theorems for functionals of moving averages. Ann. Prob. 25, 16361669.Google Scholar
Philippe, A., Surgailis, D. and Viano, M.-C. (2006). Invariance principle for a class of non stationary processes with long memory. C. R. Math. Acad. Sci. Paris 342, 269274.Google Scholar
Philippe, A., Surgailis, D. and Viano, M.-C. (2008). Time-varying fractionally integrated processes with nonstationary long memory. Theory Prob. Appl. 52, 651673.Google Scholar
Robinson, P. M. (1991). Testing for strong serial correlation and dynamic conditional heteroskedasticity in multiple regression. J. Econometrics 47, 6784.Google Scholar
Robinson, P. M. (2001). The memory of stochastic volatility models. J. Econometrics 101, 195218.Google Scholar
Stout, W. F. (1974). Almost Sure Convergence. Academic Press, New York.Google Scholar
Taqqu, M. S. (1979). Convergence of integrated processes of arbitrary Hermite rank. Z. Wahrscheinlichkeitsth. 50, 5383.Google Scholar
Wu, W. B. (2005). Nonlinear system theory: another look at dependence. Proc. Nat. Acad. Sci. USA 102, 1415014154.CrossRefGoogle Scholar
Wu, W. B. and Min, W. (2005). On linear processes with dependent innovations. Stoch. Process. Appl. 115, 939958.Google Scholar
Wu, W. B. and Shao, X. (2006). Invariance principles for fractionally integrated nonlinear processes. In Recent Developments in Nonparametric Inference and Probability (IMS Lecture Notes Monogr. Ser. 50), Institute of Mathematical Statistics, Beachwood, OH, pp. 2030.CrossRefGoogle Scholar