具有中观延迟的网络演化

Sayan Banerjee, Shankar Bhamidi, Partha Dey, Akshay Sakanaveeti
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引用次数: 0

摘要

现实世界的网络对科学和社会都产生了巨大的影响,为了了解这些系统的结构和演化,特别是在时间背景下的结构和演化,人们开发了大量数学模型。分布式网络安全和社交网络等领域的最新进展促使人们创建了概率演化模型,在这些模型中,个体仅根据网络当前状态的部分信息做出决策。本文试图探索包含 "网络延迟"(networkdelay)的模型,即新的参与者从系统的时滞快照中获取信息。在中观网络延迟的背景下,我们开发了建立在随机逼近基础上的概率工具,以理解局部函数的渐近性,如局部邻域和度分布,以及全局属性,如网络初始创建者的度演化。另一篇论文探讨了网络演化过程中的宏观延迟机制。
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Network evolution with mesoscopic delay
Fueled by 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 that incorporate \emph{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.
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