基于子图的网络形成模型

Arun G. Chandrasekhar, M. Jackson
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引用次数: 66

摘要

我们开发了一类新的随机图模型,用于网络形成的统计估计,允许在链接中存在实质性的相关性。各种子图(例如,链接,三角形,派系,星形)被生成,它们的联合结果是一个网络。估计子图“真正”形成的频率的挑战在于,子图可以重叠,也可能偶然产生新的子图,因此,子图的真实形成速率通常不能仅仅通过计算它们在最终网络中的存在来推断。我们提供了从单个(大型)网络的观测中恢复底层子图形成的速率的估计技术。我们提供了从各种统计数据中识别子图形成的真正潜在率的结果,以及为我们的估计量建立渐近正态性的相关随机变量的一个新的中心极限定理。我们还证明,如果网络足够稀疏,则子图的直接计数是一致的,并且是渐近正态估计。我们用应用程序来说明这些模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Network Formation Model Based on Subgraphs
We develop a new class of random-graph models for the statistical estimation of network formation that allow for substantial correlation in links. Various subgraphs (e.g., links, triangles, cliques, stars) are generated and their union results in a network. The challenge in estimating the frequencies with which subgraphs 'truly' form is that subgraphs can overlap and may also incidentally generate new subgraphs, and so the true rate of formation of the subgraphs cannot generally be inferred just by counting their presence in the resulting network. We provide estimation techniques for recovering the rates at which the underlying subgraphs were formed from the observation of a single (large) network. We provide results on identification of the true underlying rates of subgraph formation from various statistics, as well as a new Central Limit Theorem for correlated random variables that establishes asymptotic normality for our estimators. We also show that if the network is sparse enough then direct counts of subgraphs are consistent and asymptotically normal estimators. We illustrate the models with applications.
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