School of Mathematics and Statistics, The University of New South Wales, Sydney, NSW, 2052, Australia.
National Institutes of Health, Bethesda, USA.
Psychometrika. 2020 Sep;85(3):630-659. doi: 10.1007/s11336-020-09720-7. Epub 2020 Oct 6.
Multi-layer networks arise when more than one type of relation is observed on a common set of actors. Modeling such networks within the exponential-family random graph (ERG) framework has been previously limited to special cases and, in particular, to dependence arising from just two layers. Extensions to ERGMs are introduced to address these limitations: Conway-Maxwell-Binomial distribution to model the marginal dependence among multiple layers; a "layer logic" language to translate familiar ERGM effects to substantively meaningful interactions of observed layers; and nondegenerate triadic and degree effects. The developments are demonstrated on two previously published datasets.
当在一组共同的参与者上观察到超过一种关系时,就会出现多层网络。在指数家族随机图 (ERG) 框架内对这种网络进行建模以前仅限于特殊情况,特别是仅限于仅来自两个层的依赖性。为了解决这些限制,向 ERGM 引入了扩展:康威-最大二项式分布来对多个层之间的边缘依赖性进行建模;“层逻辑”语言将熟悉的 ERGM 效果转换为有意义的观察层之间的交互;以及非退化三元和度效应。在两个以前发表的数据集上演示了这些发展。