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A Novel Simulation Method for Binary Discrete Exponential Families, With Application to Social Networks

机译:二元离散指数家庭的一种新的仿真方法及其在社交网络中的应用

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摘要

Stochastic models for finite binary vectors are widely used in sociology, with examples ranging from social influence models on dichotomous behaviors or attitudes to models for random graphs. Exact sampling for such models is difficult in the presence of dependence, leading to the use of Markov chain Monte Carlo (MCMC) as an approximation technique. While often effective, MCMC methods have variable execution time, and the quality of the resulting draws can be difficult to assess. Here, we present a novel alternative method for approximate sampling from binary discrete exponential families having fixed execution time and well-defined quality guarantees. We demonstrate the use of this sampling procedure in the context of random graph generation, with an application to the simulation of a large-scale social network using both geographical covariates and dyadic dependence mechanisms.
机译:有限二元向量的随机模型在社会学中被广泛使用,其例子包括从二分式行为或态度的社会影响模型到随机图的模型。在存在依赖性的情况下,很难对此类模型进行精确采样,从而导致使用马尔可夫链蒙特卡罗(MCMC)作为近似技术。尽管MCMC方法通常很有效,但它们的执行时间却可变,并且所得出的抽奖的质量可能难以评估。在这里,我们提出了一种新的替代方法,用于从具有固定执行时间和明确定义的质量保证的二进制离散指数族进行近似采样。我们演示了在随机图生成的背景下使用此抽样程序,并将其应用到使用地理协变量和二元依赖机制的大型社交网络的仿真中。

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