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Convergence rates of the strong law for stationary mixing sequences

  • Magda Peligrad
Article

Summary

In this note we estimate the rate of convergence in Marcinkiewicz-Zygmung strong law, for partial sumsS n of strong stationary mixing sequences of random variables. The results improve the corresponding ones obtained by Tze Leung Lai (1977) and Christian Hipp (1979).

Keywords

Convergence Rate Invariance Principle Great Integer Equivalent Measure Probability Bound 
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Copyright information

© Springer-Verlag 1985

Authors and Affiliations

  • Magda Peligrad
    • 1
  1. 1.Department of MathematicsUniversity of CincinnatiOhioCincinnatiUSA

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