指数随机图模型
同性恋
计算机科学
传递关系
网络模型
互惠(文化人类学)
统计模型
理论计算机科学
网络动力学
不断发展的网络
编队网络
社交网络(社会语言学)
优先依附
图形
随机图
数学
复杂网络
人工智能
离散数学
心理学
社会心理学
组合数学
万维网
社会化媒体
标识
DOI:10.1146/annurev.soc.012809.102709
摘要
Statistical models for social networks as dependent variables must represent the typical network dependencies between tie variables such as reciprocity, homophily, transitivity, etc. This review first treats models for single (cross-sectionally observed) networks and then for network dynamics. For single networks, the older literature concentrated on conditionally uniform models. Various types of latent space models have been developed: for discrete, general metric, ultrametric, Euclidean, and partially ordered spaces. Exponential random graph models were proposed long ago but now are applied more and more thanks to the non-Markovian social circuit specifications that were recently proposed. Modeling network dynamics is less complicated than modeling single network observations because dependencies are spread out in time. For modeling network dynamics, continuous-time models are more fruitful. Actor-oriented models here provide a model that can represent many dependencies in a flexible way. Strong model development is now going on to combine the features of these models and to extend them to more complicated outcome spaces.
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