The network influence model is a model for binary outcome variables that accounts for dependencies between outcomes for units that are relationally tied. The basic influence model was previously extended to afford a suite of new dependence assumptions and because of its relation to traditional Markov random field models it is often referred to as the auto logistic actor-attribute model (ALAAM). We extend on current approaches for fitting ALAAMs by presenting a comprehensive Bayesian inference scheme that supports testing of dependencies across subsets of data and the presence of missing data. We illustrate different aspects of the procedures through three empirical examples: masculinity attitudes in an all-male Australian school class, educational progression in Swedish schools, and un-employment among adults in a community sample in Australia.
翻译:网络影响模型是二进制结果变量的模型,它说明具有相关性的单位的结果之间的依赖性。基本影响模型以前被扩大,以提供一套新的依赖性假设,并且由于它与传统的Markov随机野外模型的关系,它经常被称为自动后勤行为者归属模型(ALAAM ) 。我们通过提出一个全面的贝叶斯推理计划,扩大目前适应ALAAM 的方法,支持测试数据各组之间的依赖性和缺失数据的存在。我们通过三个经验性实例,说明程序的不同方面:澳大利亚全男性学校班级的男性态度、瑞典学校的教育进展以及澳大利亚社区抽样中的成年人失业。