Conditions for permanental processes to be unbounded
Michael B. Marcus, Jay Rosen

TL;DR
This paper establishes conditions under which permanental processes, defined via potential densities of transient Markov processes, are almost surely unbounded, using a novel representation involving gamma variables and inequalities for their sup-norm.
Contribution
It introduces a new representation of permanental vectors as mixtures of gamma variables and derives unboundedness conditions for a broad class of permanental processes.
Findings
Provides sufficient conditions for permanental processes to be unbounded almost surely.
Develops a Sudakov type inequality for the sup-norm of permanental vectors.
Applies results to processes associated with certain Lévy processes.
Abstract
An -permanental process is a stochastic process determined by a kernel , with the property that for all , is the Laplace transform of , where denotes the matrix and is the diagonal matrix with entries . is called a permanental vector. Under the condition that is the potential density of a transient Markov process, is represented as a random mixture of -dimensional random variables with components that are independent gamma random variables. This representation leads to a Sudakov type inequality for the sup-norm of that is used to obtain sufficient…
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