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http://dx.doi.org/10.4134/CKMS.2010.25.2.291

THE LIMITING LOG GAUSSIANITY FOR AN EVOLVING BINOMIAL RANDOM FIELD  

Kim, Sung-Yeun (INSTITUTE OF BASIC SCIENCE DAEJIN UNIVERSITY)
Kim, Won-Bae (DEPARTMENT OF MATHEMAICS DAEJIN UNIVERSITY)
Bae, Jong-Sig (DEPARTMENT OF MATHEMATICS SUNGKYUNDWAN UNIVERSITY)
Publication Information
Communications of the Korean Mathematical Society / v.25, no.2, 2010 , pp. 291-301 More about this Journal
Abstract
This paper consists of two main parts. Firstly, we introduce an evolving binomial process from a binomial stock model and consider various types of limiting behavior of the logarithm of the evolving binomial process. Among others we find that the logarithm of the binomial process converges weakly to a Gaussian process. Secondly, we provide new approaches for proving the limit theorems for an integral process motivated by the evolving binomial process. We provide a new proof for the uniform strong LLN for the integral process. We also provide a simple proof of the functional CLT by using a restriction of Bernstein inequality and a restricted chaining argument. We apply the functional CLT to derive the LIL for the IID random variables from that for Gaussian.
Keywords
evolving binomial process; limiting log Gaussian property; uniform LLN; functional CLT; LIL;
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