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Main Authors: Banerjee, Sayan, Bhamidi, Shankar, Dey, Partha, Sakanaveeti, Akshay
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.10307
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author Banerjee, Sayan
Bhamidi, Shankar
Dey, Partha
Sakanaveeti, Akshay
author_facet Banerjee, Sayan
Bhamidi, Shankar
Dey, Partha
Sakanaveeti, Akshay
contents Owing to the influence of real-world networks both in science and society, numerous mathematical models have been developed to understand the structure and evolution of these systems, particularly in a temporal context. Recent advancements in fields like distributed cyber-security and social networks have spurred the creation of probabilistic models of evolution, where individuals make decisions based on only partial information about the network's current state. This paper seeks to explore models incorporating network delay, where new participants receive information from a time-lagged snapshot of the system. In the context of mesoscopic network delays, we develop probabilistic tools built on stochastic approximation to understand asymptotics of both local functionals, such as local neighborhoods and degree distributions, as well as global properties, such as the evolution of the degree of the network's initial founder. A companion paper explores the regime of macroscopic delays in the evolution of the network.
format Preprint
id arxiv_https___arxiv_org_abs_2409_10307
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Network evolution with mesoscopic delay
Banerjee, Sayan
Bhamidi, Shankar
Dey, Partha
Sakanaveeti, Akshay
Probability
Owing to the influence of real-world networks both in science and society, numerous mathematical models have been developed to understand the structure and evolution of these systems, particularly in a temporal context. Recent advancements in fields like distributed cyber-security and social networks have spurred the creation of probabilistic models of evolution, where individuals make decisions based on only partial information about the network's current state. This paper seeks to explore models incorporating network delay, where new participants receive information from a time-lagged snapshot of the system. In the context of mesoscopic network delays, we develop probabilistic tools built on stochastic approximation to understand asymptotics of both local functionals, such as local neighborhoods and degree distributions, as well as global properties, such as the evolution of the degree of the network's initial founder. A companion paper explores the regime of macroscopic delays in the evolution of the network.
title Network evolution with mesoscopic delay
topic Probability
url https://arxiv.org/abs/2409.10307