Almost Sure Convergence Rates for the Estimation of a Covariance Operator for Negatively Associated Samples

Authors

  • H. A. Azarnoosh
  • H. Jabbari
Abstract:

Let {Xn, n >= 1} be a strictly stationary sequence of negatively associated random variables, with common continuous and bounded distribution function F. In this paper, we consider the estimation of the two-dimensional distribution function of (X1,Xk+1) based on histogram type estimators as well as the estimation of the covariance function of the limit empirical process induced by the sequence {Xn, n>= 1}. Then, we derive uniform strong convergence rates for two-dimensional distribution function of (X1,Xk+1) without any condition on the covariance structure of the variables. Finally, assuming a convenient decrease rate of the covariances Cov(X1,Xn+1), n >= 1, we introduce uniform strong convergence rate for covariance function of the limit empirical process.

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Journal title

volume 5  issue None

pages  53- 67

publication date 2006-11

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