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Autori principali: Kerriou, Céline, Mörters, Peter
Natura: Preprint
Pubblicazione: 2022
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Accesso online:https://arxiv.org/abs/2206.14627
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author Kerriou, Céline
Mörters, Peter
author_facet Kerriou, Céline
Mörters, Peter
contents We prove a large deviation principle for the sum of n independent heavy-tailed random variables, which are subject to a moving cut-off boundary at location n. Conditional on the sum being large at scale n, we show that a finite number of summands take values near the cut-off boundary, while the remaining variables still obey the law of large numbers. This generalises the well-known single-big-jump principle for random variables without cut-off to a situation where just the minimal necessary number of jumps occur. As an application, we consider a random graph with vertex set given by the lattice points of a torus with sidelength 2N+1. Every vertex is the centre of a ball with random radius sampled from a heavy-tailed distribution. Oriented edges are drawn from the central vertex to all other vertices in this ball. When this graph is conditioned on having an exceptionally large number of edges we use our main result to show that, as N goes to infinity, the excess outdegrees condense in a fixed, finite number of randomly scattered vertices of macroscopic outdegree. By contrast, no condensation occurs for the indegrees of the vertices, which all remain microscopic in size.
format Preprint
id arxiv_https___arxiv_org_abs_2206_14627
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle The fewest-big-jumps principle and an application to random graphs
Kerriou, Céline
Mörters, Peter
Probability
We prove a large deviation principle for the sum of n independent heavy-tailed random variables, which are subject to a moving cut-off boundary at location n. Conditional on the sum being large at scale n, we show that a finite number of summands take values near the cut-off boundary, while the remaining variables still obey the law of large numbers. This generalises the well-known single-big-jump principle for random variables without cut-off to a situation where just the minimal necessary number of jumps occur. As an application, we consider a random graph with vertex set given by the lattice points of a torus with sidelength 2N+1. Every vertex is the centre of a ball with random radius sampled from a heavy-tailed distribution. Oriented edges are drawn from the central vertex to all other vertices in this ball. When this graph is conditioned on having an exceptionally large number of edges we use our main result to show that, as N goes to infinity, the excess outdegrees condense in a fixed, finite number of randomly scattered vertices of macroscopic outdegree. By contrast, no condensation occurs for the indegrees of the vertices, which all remain microscopic in size.
title The fewest-big-jumps principle and an application to random graphs
topic Probability
url https://arxiv.org/abs/2206.14627