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arXiv:2105.05709 [math.PR]AbstractReferencesReviewsResources

Graph distances in scale-free percolation: the logarithmic case

Nannan Hao, Markus Heydenreich

Published 2021-05-12, updated 2022-02-09Version 2

Scale-free percolation is a stochastic model for complex networks. In this spatial random graph model, vertices $x,y\in\mathbb{Z}^d$ are linked by an edge with probability depending on i.i.d.\ vertex weights and the Euclidean distance $|x-y|$. Depending on the various parameters involved, we get a rich phase diagram. We study graph distances and compare it to the Euclidean distance of the vertices. Our main attention is on a regime where graph distances are (poly-)logarithmic in the Euclidean distance. We obtain improved bounds on the logarithmic exponents. In the light tail regime, the correct exponent is identified.

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