Dyadic data analysis with amen
Abstract
Dyadic data on pairs of objects, such as relational or social network data, often exhibit strong statistical dependencies. Certain types of second-order dependencies, such as degree heterogeneity and reciprocity, can be well-represented with additive random effects models. Higher-order dependencies, such as transitivity and stochastic equivalence, can often be represented with multiplicative effects. The "amen" package for the R statistical computing environment provides estimation and inference for a class of additive and multiplicative random effects models for ordinal, continuous, binary and other types of dyadic data. The package also provides methods for missing, censored and fixed-rank nomination data, as well as longitudinal dyadic data. This tutorial illustrates the "amen" package via example statistical analyses of several of these different data types.
Cite
@article{arxiv.1506.08237,
title = {Dyadic data analysis with amen},
author = {Peter D. Hoff},
journal= {arXiv preprint arXiv:1506.08237},
year = {2015}
}
Comments
This is a vignette for the R package "amen"