Convergence to scale-invariant Poisson processes and applications in Dickman approximation
Chinmoy Bhattacharjee, Ilya Molchanov

TL;DR
This paper investigates the convergence of certain point processes to scale-invariant Poisson processes, with applications to Dickman distributions and number theory, providing new convergence results and multivariate extensions.
Contribution
It establishes general conditions for convergence to scale-invariant Poisson processes and introduces multivariate Dickman distributions, extending previous univariate results.
Findings
Proves weak convergence of point processes to scale-invariant Poisson processes.
Derives new Dickman distribution convergence results via integral convergence.
Extends results to multivariate point processes and introduces multivariate Dickman distributions.
Abstract
We study weak convergence of a sequence of point processes to a scale-invariant simple point process. For a deterministic sequence of positive real numbers increasing to infinity as and a sequence of independent non-negative integer-valued random variables, we consider the sequence of point processes \begin{equation*} \nu_n=\sum_{k=1}^\infty X_k \delta_{z_k/z_n}, \quad n\in \mathbb{N}, \end{equation*} and prove that, under some general conditions, it converges vaguely in distribution to a scale-invariant Poisson process on with the intensity measure having the density , . An important motivating example from probabilistic number theory relies on choosing and , , where is an…
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