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Weak convergence of compound stochastic process,I
Authors:Donald L Iglehart
Institution:Department of Statistics, Stanford University, Stanford, Calif. 94305, U.S.A.
Abstract:Compound stochastic processes are constructed by taking the superpositive of independent copies of secondary processes, each of which is initiated at an epoch of a renewal process called the primary process. Suppose there are M possible k-dimensional secondary processes {ξv(t):t?0}, v=1,2,…,M. At each epoch of the renewal process {A(t):t?0} we initiate a random number of each of the M types. Let ml:l?1} be a sequence of M-dimensional random vectors whose components specify the number of secondary processes of each type initiated at the various epochs. The compound process we study is
(t)=∑l=1A(t)v=1Mj=1Mlvξljv(t?Tl), t?0
, where the ξvlj() are independent copies of ξv,mlv is the vth component of m and {τl:l?1} are the epochs of the renewal process. Our interest in this paper is to obtain functional central limit theorems for {Y(t):t?0} after appropriately scaling the time parameter and state space. A variety of applications are discussed.
Keywords:6030  Compound stochastic processes  functional central limit theorem  invariance principle  weak convergence
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