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Recursive estimation of distributional fix-points

Published online by Cambridge University Press:  14 July 2016

Paul Embrechts*
Affiliation:
ETH Zürich
Harro Walk*
Affiliation:
Universität Stuttgart
*
Postal address: Department of Mathematics, ETH, CH-8092 Zürich, Switzerland. Email address: [email protected]
∗∗Postal address: Mathematisches Institut A, Universität Stuttgart, 70550 Stuttgart, Germany. Email address: [email protected]

Abstract

In various stochastic models the random equation of implicit renewal theory appears where the real random variable S and the stochastic process Ψ with index space and state space R are independent. By use of stochastic approximation the distribution function of S is recursively estimated on the basis of independent or ergodic copies of Ψ. Under integrability assumptions almost sure L1-convergence is proved. The choice of gains in the recursion is discussed. Applications are given to insurance mathematics (perpetuities) and queueing theory (stationary waiting and queueing times).

Type
Research Papers
Copyright
Copyright © 2000 by The Applied Probability Trust 

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