Dynamics Concentration of Large-Scale Tightly-Connected Networks

03/14/2019
by   Hancheng Min, et al.
0

The ability to achieve coordinated behavior -- engineered or emergent -- on networked systems has attracted widespread interest over several fields. This has led to remarkable advances on the development of a theoretical understanding of the conditions under which agents within a network can reach agreement (consensus) or develop coordinated behaviors such as synchronization. However, fewer advances have been made toward explaining another commonly observed phenomena in tightly-connected networks systems: output responses of nodes in the networks are almost identical to each other despite heterogeneity in their individual dynamics. In this paper, we leverage tools from high-dimensional probability to provide an initial answer to this phenomena. More precisely, we show that for linear networks of nodal random transfer functions, as the networks size and connectivity grows, every node in the network follows the same response to an input or disturbance --irrespectively of the source of this input. We term this behavior as dynamics concentration as it stems from the fact that the network transfer matrix uniformly converges in probability to a unique dynamic response -- i.e., it concentrates -- determined by the distribution of the random transfer function of each node. We further discuss the implications of our analysis in the context of model reduction and robustness and provide numerical evidence that similar phenomena occur in small deterministic networks over a properly defined frequency band.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/18/2020

Tight Bounds for Connectivity of Random K-out Graphs

Random K-out graphs are used in several applications including modeling ...
research
05/03/2018

On the Metastability of Quadratic Majority Dynamics on Clustered Graphs and its Biological Implications

We investigate the behavior of a simple majority dynamics on network top...
research
11/13/2021

The Three Stages of Learning Dynamics in High-Dimensional Kernel Methods

To understand how deep learning works, it is crucial to understand the t...
research
08/01/2018

Antagonistic Phenomena in Network Dynamics

Recent research on the network modeling of complex systems has led to a ...
research
03/30/2022

Community Integration Algorithms (CIAs) for Dynamical Systems on Networks

Dynamics of large-scale network processes underlies crucial phenomena ra...
research
09/09/2023

Asynchronous Majority Dynamics on Binomial Random Graphs

We study information aggregation in networks when agents interact to lea...
research
05/23/2022

Agreement and Statistical Efficiency in Bayesian Perception Models

Bayesian models of group learning are studied in Economics since the 197...

Please sign up or login with your details

Forgot password? Click here to reset