Resistance distance distribution in large sparse random graphs
Pawat Akara-pipattana, Thiparat Chotibut, Oleg Evnin

TL;DR
This paper analyzes the distribution of resistance distances in large Erdős-Rényi random graphs, developing a field-theoretic approach and saddle point analysis to approximate and understand the distribution's behavior across different mean degrees.
Contribution
It introduces a novel auxiliary field representation and saddle point methods to analytically approximate resistance distance distributions in large sparse random graphs, including degree-specific features.
Findings
The leading order expansion matches numerical simulations well for c=4 or 6.
At large c, the distribution approaches a Gaussian with mean 2/c.
At small c, the distribution is skewed with identifiable subleading peaks.
Abstract
We consider an Erdos-Renyi random graph consisting of N vertices connected by randomly and independently drawing an edge between every pair of them with probability c/N so that at N->infinity one obtains a graph of finite mean degree c. In this regime, we study the distribution of resistance distances between the vertices of this graph and develop an auxiliary field representation for this quantity in the spirit of statistical field theory. Using this representation, a saddle point evaluation of the resistance distance distribution is possible at N->infinity in terms of an 1/c expansion. The leading order of this expansion captures the results of numerical simulations very well down to rather small values of c; for example, it recovers the empirical distribution at c=4 or 6 with an overlap of around 90%. At large values of c, the distribution tends to a Gaussian of mean 2/c and standard…
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