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首页> 外文期刊>The Annals of applied statistics >MAXIMUM LIKELIHOOD ESTIMATION FOR SOCIAL NETWORK DYNAMICS
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MAXIMUM LIKELIHOOD ESTIMATION FOR SOCIAL NETWORK DYNAMICS

机译:社交网络动力学的最大似然估计

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摘要

A model for network panel data is discussed, based on the assumption that the observed data are discrete observations of a continuous-time Markov process on the space of all directed graphs on a given node set, in which changes in tie variables are independent conditional on the current graph. The model for tie changes is parametric and designed for applications to social network analysis, where the network dynamics can be interpreted as being generated by choices made by the social actors represented by the nodes of the graph. An algorithm for calculating the Maximum Likelihood estimator is presented, based on data augmentation and stochastic approximation. An application to an evolving friendship network is given and a small simulation study is presented which suggests that for small data sets the Maximum Likelihood estimator is more efficient than the earlier proposed Method of Moments estimator.
机译:基于以下假设,讨论了网络面板数据的模型:假设观察到的数据是给定节点集上所有有向图的空间上连续时间马尔可夫过程的离散观察,其中联系变量的变化独立于当前图。领带变化模型是参数化的,设计用于社交网络分析,其中网络动态可以解释为由图的节点表示的社交参与者的选择所生成。提出了一种基于数据扩充和随机逼近的最大似然估计器计算算法。给出了一个正在发展的友谊网络的应用,并进行了一个小型仿真研究,该研究表明,对于较小的数据集,最大似然估计器的效率要高于早期提出的矩量估计器。

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