Asymptotics for Reinforced Stochastic Processes on Hierarchical Networks
Li Yang, and Dandan Jiang, and Jiang Hu, and Zhidong Bai

TL;DR
This paper studies the long-term behavior of reinforced stochastic processes on hierarchical networks, extending existing theory to non-diagonalizable matrices and revealing how spectral properties influence fluctuations and convergence.
Contribution
It generalizes asymptotic analysis to reducible, non-diagonalizable matrices, characterizing the impact on synchronization, fluctuations, and covariance structures in hierarchical networks.
Findings
Proves almost sure synchronization to a common limit.
Derives a joint central limit theorem for the processes.
Shows non-diagonalizability affects covariance and introduces logarithmic factors.
Abstract
In this paper, we analyze the asymptotic behavior of a system of interacting reinforced stochastic processes on a directed network of agents. The system is defined by the coupled dynamics and , where agent actions are governed by a column-normalized adjacency matrix , and with . Existing asymptotic theory has largely been restricted to irreducible and diagonalizable . We extend this analysis to the broader and more practical class of reducible and non-diagonalizable matrices possessing a block upper-triangular form, which models hierarchical influence. We first establish synchronization, proving…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · Matrix Theory and Algorithms · Nonlinear Dynamics and Pattern Formation
