数值网络上指数族随机图模型的参数估计方法:比较模拟研究

IF 2.9 2区 社会学 Q1 ANTHROPOLOGY Social Networks Pub Date : 2023-07-28 DOI:10.1016/j.socnet.2023.07.001
Peng Huang , Carter T. Butts
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引用次数: 6

摘要

指数族随机图模型(ERGM)已成为为各种关系类型建模社交网络的重要框架。有值网络的ERGM不如无值网络发达,并带来了特殊的计算挑战。具有非负整数边值的网络数据(计数值网络)就是一个重要的例子,例子从地方之间的移民和贸易流动的规模到个人之间互动和相遇的频率。在这里,我们提出了一种有效的计数值ERGM的并行子采样最大伪似然估计(MPLE)方案,并通过基于美国两个州移民流网络的模拟研究,将其性能与现有的对比散度(CD)和蒙特卡洛最大似然估计(MCMLE)方法进行了比较。我们的结果表明,边缘值方差是方法性能的关键因素,而网络大小主要影响它们在计算时间上的相对优势。对于小方差网络,所有方法在点估计中都表现良好,而CD大大高估了不确定性,而MPLE在依赖项方面低估了它们;对于小型网络,所有方法都具有快速估计,但随着网络规模的增加,CD和子采样多核MPLE提供了速度优势。对于大方差网络,MPLE和MCMLE都提供了对系数及其不确定性的高质量估计,但MPLE明显快于MCMLE;MPLE也是比CD更好的MCMLE播种方法,因为CD使MCMLE更容易收敛失败。该研究表明,MCMLE和MPLE应该分别是估计小方差和大方差值网络ERGM的默认方法。我们还根据数据结构、可用的计算资源和分析目标,为有价值的ERGM的计算方法选择提供了进一步的建议。
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Parameter estimation procedures for exponential-family random graph models on count-valued networks: A comparative simulation study

The exponential-family random graph models (ERGMs) have emerged as an important framework for modeling social networks for a wide variety of relational types. ERGMs for valued networks are less well-developed than their unvalued counterparts, and pose particular computational challenges. Network data with edge values on the non-negative integers (count-valued networks) is an important such case, with examples ranging from the magnitude of migration and trade flows between places to the frequency of interactions and encounters between individuals. Here, we propose an efficient parallelizable subsampled maximum pseudo-likelihood estimation (MPLE) scheme for count-valued ERGMs, and compare its performance with existing Contrastive Divergence (CD) and Monte Carlo Maximum Likelihood Estimation (MCMLE) approaches via a simulation study based on migration flow networks in two U.S. states. Our results suggest that edge value variance is a key factor in method performance, while network size mainly influences their relative merits in computational time. For small-variance networks, all methods perform well in point estimations while CD greatly overestimates uncertainties, and MPLE underestimates them for dependence terms; all methods have fast estimation for small networks, but CD and subsampled multi-core MPLE provides speed advantages as network size increases. For large-variance networks, both MPLE and MCMLE offer high-quality estimates of coefficients and their uncertainty, but MPLE is significantly faster than MCMLE; MPLE is also a better seeding method for MCMLE than CD, as the latter makes MCMLE more prone to convergence failure. The study suggests that MCMLE and MPLE should be the default approach to estimate ERGMs for small-variance and large-variance valued networks, respectively. We also offer further suggestions regarding choice of computational method for valued ERGMs based on data structure, available computational resources and analytical goals.

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来源期刊
Social Networks
Social Networks Multiple-
CiteScore
5.90
自引率
12.90%
发文量
118
期刊介绍: Social Networks is an interdisciplinary and international quarterly. It provides a common forum for representatives of anthropology, sociology, history, social psychology, political science, human geography, biology, economics, communications science and other disciplines who share an interest in the study of the empirical structure of social relations and associations that may be expressed in network form. It publishes both theoretical and substantive papers. Critical reviews of major theoretical or methodological approaches using the notion of networks in the analysis of social behaviour are also included, as are reviews of recent books dealing with social networks and social structure.
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