Zero Forcing on Iterated Graph Models
Christopher Brice, Erin Meger, Nhat-Dinh Nguyen, Allen Rakhamimov, Abigail Raz

TL;DR
This paper investigates zero forcing and failed zero forcing numbers on iterated complex network models, providing bounds and characterizations, and explores related diffusion processes like graph burning.
Contribution
It offers new bounds and exact values for zero forcing parameters on ILT and ILAT models, extending understanding of information spread in these networks.
Findings
Failed zero forcing number in ILAT graphs has only four possible values.
Bounds for zero forcing number are established for ILT and ILAT models.
Brief analysis of graph burning on iterated graph models.
Abstract
Modeling how information travels throughout a network has vast applications across social sciences, cybersecurity, and graph-based neural networks. In this paper, we consider the zero forcing model for information diffusion on iterative deterministic complex network models. In particular, we continue the exploration of the Iterative Local Transitive (ILT) model and the Iterative Local Anti-Transitive (ILAT) model, both introduced by Bonato et. al. in 2009 and 2017, respectively. These models use ideas from Structural Balance Theory to generate edges through a notion of cloning where ``the friend of my friend is my friend'' and anticloning where ``the enemy of my enemy is my friend.'' Zero forcing, introduced independently by Burgarth and Giovanetti and a special working group at AIM in 2007 and 2008, begins with some set of forced vertices, the remaining are unforced. If a forced…
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Taxonomy
TopicsAdvanced Graph Theory Research · Graph Theory and Algorithms · Complexity and Algorithms in Graphs
