Nonlinear walkers and efficient exploration of congested networks
Timoteo Carletti, Malbor Asllani, Duccio Fanelli, Vito Latora

TL;DR
This paper introduces a new class of nonlinear stochastic processes for interacting random walkers on networks, providing analytical tools to understand their dynamics and revealing optimal crowding conditions for network exploration.
Contribution
It develops a comprehensive framework for nonlinear random walkers with state-dependent transition probabilities, extending traditional linear models and analyzing their behavior on real-world networks.
Findings
Optimal crowding maximizes entropy rate in network exploration.
Real-world networks are structured to facilitate exploration under congestion.
Analytical expressions for equilibrium occupation probabilities are derived.
Abstract
Random walks are the simplest way to explore or search a graph, and have revealed a very useful tool to investigate and characterize the structural properties of complex networks from the real world, e.g. they have been used to identify the modules of a given network, its most central nodes and paths, or to determine the typical times to reach a target. Although various types of random walks whose motion is node biased have been proposed, which are still amenable to analytical solution, most if not all of them rely on the assumption of linearity and independence of the walkers. We introduce a novel class of nonlinear stochastic processes describing a system of interacting random walkers moving over networks with finite node capacities. The transition probabilities are modulated by nonlinear functions of the available space at the destination node, with a bias parameter that allows to…
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