A Weak Convergence Theorem for Mixingale Arrays

  • Hong, Dug-Hun (Department of Statistics, Catholic University of Taegu-Hyosung, Kyungbuk 713-702) ;
  • Kim, Hye-Kyung (Department of Mathematics, Catholic University of Taegu-Hyosung, Kyungbuk 713-702) ;
  • Kim, Ju-Young (Department of Mathematics, Catholic University of Taegu-Hyosung, Kyungbuk 713-702)
  • Published : 1995.12.01

Abstract

This paper gives a generalization of an $L_1$-convergence theorem for dependent processes due to Andrews (1988) and also a probability convergence theorem.

Keywords

References

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