Hostname: page-component-cd9895bd7-jkksz Total loading time: 0 Render date: 2024-12-25T08:14:18.689Z Has data issue: false hasContentIssue false

Marcinkiewicz law of large numbers for outer products of heavy-tailed, long-range dependent data

Published online by Cambridge University Press:  10 June 2016

Michael A. Kouritzin*
Affiliation:
University of Alberta
Samira Sadeghi*
Affiliation:
University of Alberta
*
* Postal address: Department of Mathematical and Statistical Sciences, University of Alberta, Edmonton, AB T6G 2G1, Canada.
* Postal address: Department of Mathematical and Statistical Sciences, University of Alberta, Edmonton, AB T6G 2G1, Canada.

Abstract

The Marcinkiewicz strong law, limn→∞(1 / n1/p)∑k=1n(Dk - D) = 0 almost surely with p ∈ (1, 2), is studied for outer products Dk = {XkX̅kT}, where {Xk} and {X̅k} are both two-sided (multivariate) linear processes (with coefficient matrices (Cl), (C̅l) and independent and identically distributed zero-mean innovations {Ξ} and {Ξ̅}). Matrix sequences Cl and C ̅l can decay slowly enough (as |l| → ∞) that {Xk,X ̅k} have long-range dependence, while {Dk} can have heavy tails. In particular, the heavy-tail and long-range-dependence phenomena for {Dk} are handled simultaneously and a new decoupling property is proved that shows the convergence rate is determined by the worst of the heavy tails or the long-range dependence, but not the combination. The main result is applied to obtain a Marcinkiewicz strong law of large numbers for stochastic approximation, nonlinear function forms, and autocovariances.

Type
Research Article
Copyright
Copyright © Applied Probability Trust 2016 

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]Avram, F. and Taqqu, M. S. (1987).Generalized powers of strongly dependent random variables.Ann. Prob. 15,767775.Google Scholar
[2]Davis, R. and Resnick, S. (1986).Limit theory for the sample covariance and correlation functions of moving averages.Ann. Statist. 14,533558.Google Scholar
[3]Dobrushin, R. L. and Major, P. (1979).Non-central limit theorems for nonlinear functionals of Gaussian fields.Z. Wahrscheinlichkeitsth. 50,2752.Google Scholar
[4]Giraitis, and Surgailis, (1986).Multivariate Appell polynomials and the central limit theorem. In Dependence in Probability and Statistics,Birkhäuser,Boston, MA, pp.2171.Google Scholar
[5]Giraitis, L. and Surgailis, D. (1990).A limit theorem for polynomials of linear process with long-range dependence.Lithuanian Math. J. 29,128145.Google Scholar
[6]Horváth, L. and Kokoszka, P. (2008).Sample autocovariances of long-memory time series.Bernoulli 14,405418.Google Scholar
[7]Karagiannis, T.,Molle, M. and Faloutsos, M. (2004).Long-range dependence ten years of Internet traffic modeling.IEEE Internet Comput. 8,5764.Google Scholar
[8]Kouritzin, M. A. (1996).On the convergence of linear stochastic approximation procedures.IEEE Trans. Inform. Theory 42,13051309.CrossRefGoogle Scholar
[9]Kouritzin, M. A. (1996).On the interrelation of almost sure invariance principles for certain stochastic adaptive algorithms and for partial sums of random variables.J. Theoret. Prob. 9,811840.Google Scholar
[10]Kouritzin, M. A. (1995).Strong approximation for cross-covariances of linear variables with long-range dependence.Stoch. Process. Appl. 60,343353.Google Scholar
[11]Kouritzin, M. A. and Sadeghi, S. (2015).Convergence rates and decoupling in linear stochastic approximation algorithms.SIAM J. Control Optimization 53,14841508.Google Scholar
[12]Louhichi, S. and Soulier, P. (2000).Marcinkiewicz–Zygmund strong laws for infinite variance time series.Statist. Inference Stoch. Process. 3,3140.Google Scholar
[13]Mandelbrot, B. (1972).Statistical methodology for non-periodic cycles: from the covariance to R/S analysis.Ann. Econ. Social Measurement 1,259290.Google Scholar
[14]Mandelbrot, B. B. and Wallis, J. R. (1968).Noah, Joseph and operational hydrology.Water Resources Res. 4,909918.Google Scholar
[15]Rosenblatt, M. (1961).Independence and dependence. In Proc. 4th Berkeley Symp. Math. Statist. Prob.,University of California Press,Berkeley, pp.431443.Google Scholar
[16]Stout, W. F. (1974).Almost Sure Convergence.Academic Press,New York.Google Scholar
[17]Surgailis, D. (1982).Zones of attraction of self-similar multiple integrals.Lithuanian Math. J. 22,327340.CrossRefGoogle Scholar
[18]Surgailis, D. (2004).Stable limits of sums of bounded functions of long-memory moving averages with finite variance.Bernoulli 10,327355.CrossRefGoogle Scholar
[19]Taqqu, M. S. (1979).Convergence of integrated processes of arbitrary Hermite rank.Z. Wahrscheinlichkeitsth. 50,5383.CrossRefGoogle Scholar
[20]Vaičiulis, M. (2003).Convergence of sums of Appell polynomials with infinite variance.Lithuanian Math. J. 43,6782.Google Scholar
[21]Varotsos, C. and Kirk-Davidoff, D. (2006).Long-memory processes in ozone and temperature variations at the region 60 degrees S – 60 degrees N.Atmospheric Chemistry Phys. 6,40934100.Google Scholar
[22]Wu, W. B. and Min, W. (2005).On linear processes with dependent innovations.Stoch. Process. Appl. 115,939958.Google Scholar
[23]Wu, W. B.,Huang, Y. and Zheng, W. (2010).Covariances estimation for long-memory processes.Adv. Appl. Prob. 42,137157.CrossRefGoogle Scholar