用于高斯潜在位置网络模型的更快MCMC

IF 1.4 Q2 SOCIAL SCIENCES, INTERDISCIPLINARY
Network Science Pub Date : 2020-06-13 DOI:10.1017/nws.2022.1
Neil A. Spencer, B. Junker, T. Sweet
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引用次数: 4

摘要

摘要潜在位置网络模型是网络科学中的一种通用工具;应用程序包括对实体进行聚类,控制因果混杂因素,以及在未观察到的图上定义先验。估计每个节点的潜在位置通常被定义为贝叶斯推理问题,吉布斯中的Metropolis是最流行的近似后验分布的工具。然而,众所周知,Gibbs内部的Metropolis对于大型网络来说效率低下;接受率的计算是昂贵的,并且得到的后验图是高度相关的。在这篇文章中,我们提出了一种替代的马尔可夫链蒙特卡罗策略——使用分裂哈密顿蒙特卡罗和萤火虫蒙特卡罗的组合定义——它利用后验分布的函数形式进行更有效的后验计算。我们证明,在合成网络以及学区教师和教职员工的真实信息共享网络上,这些策略优于Gibbs中的Metropolis和其他算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Faster MCMC for Gaussian latent position network models
Abstract Latent position network models are a versatile tool in network science; applications include clustering entities, controlling for causal confounders, and defining priors over unobserved graphs. Estimating each node’s latent position is typically framed as a Bayesian inference problem, with Metropolis within Gibbs being the most popular tool for approximating the posterior distribution. However, it is well-known that Metropolis within Gibbs is inefficient for large networks; the acceptance ratios are expensive to compute, and the resultant posterior draws are highly correlated. In this article, we propose an alternative Markov chain Monte Carlo strategy—defined using a combination of split Hamiltonian Monte Carlo and Firefly Monte Carlo—that leverages the posterior distribution’s functional form for more efficient posterior computation. We demonstrate that these strategies outperform Metropolis within Gibbs and other algorithms on synthetic networks, as well as on real information-sharing networks of teachers and staff in a school district.
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来源期刊
Network Science
Network Science SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
3.50
自引率
5.90%
发文量
24
期刊介绍: Network Science is an important journal for an important discipline - one using the network paradigm, focusing on actors and relational linkages, to inform research, methodology, and applications from many fields across the natural, social, engineering and informational sciences. Given growing understanding of the interconnectedness and globalization of the world, network methods are an increasingly recognized way to research aspects of modern society along with the individuals, organizations, and other actors within it. The discipline is ready for a comprehensive journal, open to papers from all relevant areas. Network Science is a defining work, shaping this discipline. The journal welcomes contributions from researchers in all areas working on network theory, methods, and data.
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