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Some probabilistic properties of fractional point processes (1604.05235v1)

Published 18 Apr 2016 in math.PR

Abstract: This paper studies the first hitting times of generalized Poisson processes $Nf(t)$, related to Bernstein functions $f$. For the space-fractional Poisson processes, $N\alpha(t)$, $t>0$ (corresponding to $f= x\alpha$), the hitting probabilities $P{T_k\alpha<\infty}$ are explicitly obtained and analyzed. The processes $Nf(t)$ are time-changed Poisson processes $N(Hf(t))$ with subordinators $Hf(t)$ and here we study $N\left(\sum_{j=1}n H{f_j}(t)\right)$ and obtain probabilistic features of these extended counting processes. A section of the paper is devoted to processes of the form $N(|\mathcal{G}{H,\nu}(t)|)$ where $\mathcal{G}{H,\nu}(t)$ are generalized grey Brownian motions. This involves the theory of time-dependent fractional operators of the McBride form. While the time-fractional Poisson process is a renewal process, we prove that the space-time Poisson process is no longer a renewal process.

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