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Principle Seminar of the Department of Probability Theory, Moscow State University
March 11, 2009 16:45, Moscow, MSU, auditorium 16-24
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Statistical limit theorems for weak dependent random fields
N. Yu. Kryzhanovskaya |
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Abstract:
Real and vector-valued weakly dependent random fields are
investigated. The main sources of interest here are percolation
theory, statistical physics, mathematical statistics and reliability
theory. For such random fields the consistency of statistics with
local averaging that were introduced by Peligrad, Shao, Bulinski and
Vronski is proved. Statistical version of the central limit theorem
(CLT) with random matrix normalization (involving these statistics) is
established. The main result of the first Chapter provides an estimate
of the convergence rate in this CLT over a family of convex bounded
sets belonging to $\R^k$. Multidimensional analogues of Parzen’s and Rosenblatt’s kernel
estimators of the long-run covariance matrix are constructed for
centered weakly dependent and not necessarily stationary random
fields. For sequences of random vectors, possessing mixing property,
the estimators of this type were studied by White, Hansen and Andrews.
Among the results of this Chapter we mention consistency and strong
consistency of estimators under consideration. Moreover in the third Chapter new moment and maximal inequalities are
obtained for sums of dependent multiindexed random variables. The
proofs of these theorems are essentially based on the Moricz method
and the recent author’s results on separation of discrete sets in a
multidimensional space that develop the technique introduced by
Bernstein and Lifshits.
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