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Large-scale estimation of random graph models with local dependence

机译:随机图模型的大规模估计与局部依赖性

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摘要

A class of random graph models is considered, combining features of exponential-family models and latent structure models, with the goal of retaining the strengths of both of them while reducing the weaknesses of each of them. An open problem is how to estimate such models from large networks. A novel approach to large-scale estimation is proposed, taking advantage of the local structure of such models for the purpose of local computing. The main idea is that random graphs with local dependence can be decomposed into subgraphs, which enables parallel computing on subgraphs and suggests a two-step estimation approach. The first step estimates the local structure underlying random graphs. The second step estimates parameters given the estimated local structure of random graphs. Both steps can be implemented in parallel, which enables large-scale estimation. The advantages of the two-step estimation approach are demonstrated by simulation studies with up to 10,000 nodes and an application to a large Amazon product recommendation network with more than 10,000 products. (C) 2020 Elsevier B.V. All rights reserved.
机译:考虑了一类随机图模型,将指数家庭模型和潜在结构模型的特征组合,其目标是保持它们两者的优点,同时减少它们中的每一个的弱点。打开问题是如何从大型网络估算这些模型。提出了一种新的大规模估计方法,用于利用这种模型的局部结构,以局部计算目的。主要思想是,具有本地依赖性的随机图可以分解为子图,这使得能够在子图上并行计算并提出两步估计方法。第一步估计局部结构随机图。给定参数估计随机图的估计本地结构。两个步骤都可以并行实现,这使得能够大规模估计。两步估计方法的优点是通过仿真研究来证明,具有多达10,000个节点和应用于超过10,000个产品的大型亚马逊产品推荐网络。 (c)2020 Elsevier B.V.保留所有权利。

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