Probabilistic Pursuits on Graphs
Michael Amir, Alfred M. Bruckstein

TL;DR
This paper studies pursuit dynamics of agents on graphs, showing convergence to shortest paths in certain graph classes and characterizing the limiting distributions of their walks.
Contribution
It generalizes pursuit models from grids to broader graph classes, proving convergence to shortest paths in pseudo-modular, chordal, and product graphs, and analyzing limiting distributions.
Findings
Convergence to shortest paths in pseudo-modular and chordal graphs.
Extension of pursuit models to graph products.
Limiting distributions are uniform over sets of equal-length walks.
Abstract
We consider discrete dynamical systems of "ant-like" agents engaged in a sequence of pursuits on a graph environment. The agents emerge one by one at equal time intervals from a source vertex and pursue each other by greedily attempting to close the distance to their immediate predecessor, the agent that emerged just before them from , until they arrive at the destination point . Such pursuits have been investigated before in the continuous setting and in discrete time when the underlying environment is a regular grid. In both these settings the agents' walks provably converge to a shortest path from to . Furthermore, assuming a certain natural probability distribution over the move choices of the agents on the grid (in case there are multiple shortest paths between an agent and its predecessor), the walks converge to the uniform distribution over all shortest paths…
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