First passage percolation on random graphs with finite mean degrees
Shankar Bhamidi, Remco van der Hofstad, Gerard Hooghiemstra

TL;DR
This paper analyzes first passage percolation on the configuration model with power-law degree distributions, deriving asymptotics for minimal path weights and hopcount, revealing how edge weights alter network geometry.
Contribution
It provides explicit asymptotic distributions for minimal path weights and hopcount in weighted random graphs with finite mean degrees, extending previous ultra-small world results.
Findings
Central limit theorem for hopcount with log n scaling
Distributional convergence for minimal path weight
Edge weights significantly change network geometry
Abstract
We study first passage percolation on the configuration model. Assuming that each edge has an independent exponentially distributed edge weight, we derive explicit distributional asymptotics for the minimum weight between two randomly chosen connected vertices in the network, as well as for the number of edges on the least weight path, the so-called hopcount. We analyze the configuration model with degree power-law exponent , in which the degrees are assumed to be i.i.d. with a tail distribution which is either of power-law form with exponent , or has even thinner tails (). In this model, the degrees have a finite first moment, while the variance is finite for , but infinite for . We prove a central limit theorem for the hopcount, with asymptotically equal means and variances equal to , where for…
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