$L^1$-Norm of Infinitely Divisible Random Vectors and Certain Stochastic Integrals

Michael B. Marcus (The City College of CUNY)
Jan Rosinski (University of Tennessee)

Abstract


Equivalent upper and lower bounds for the $L^1$ norm of Hilbert space valued infinitely divisible random variables are obtained and used to find bounds for different types of stochastic integrals.

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Pages: 15-29

Publication Date: January 10, 2001

DOI: 10.1214/ECP.v6-1031

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