ergmm-class function

Class of Fitted Exponential Random Graph Mixed Models

Class of Fitted Exponential Random Graph Mixed Models

A class ergmm to represent a fitted exponential random graph mixed model. The output of ergmm.

Details

There are methods summary.ergmm, print.ergmm, plot.ergmm, predict.ergmm, and as.mcmc.list.ergmm.

The structure of ergmm is as follows:

  • sample: An object of class ergmm.par.list containing the MCMC sample from the posterior. If the run had multiple threads, their output is concatenated.
  • mcmc.mle: A list containing the parameter configuration of the highest-likelihood MCMC iteration.
  • mcmc.pmode: A list containing the parameter configuration of the highest-joint-density (conditional on cluster assignments) MCMC iteration.
  • mkl: A list containing the MKL estimate.
  • model: A list containing the model that was fitted.
  • prior: A list containing the information about the prior distribution used. It can be passed as parameter prior to ergmm to reproduce the prior in a new fit.
  • control: A list containing the information about the model fit settings that do not affect the posterior distribution. It can be passed as parameter control to ergmm to reproduce control parameters in a new fit.
  • mle: A list containing the MLE, conditioned on cluster assignments.
  • pmode: A list containing the posterior mode, conditioned on cluster assignments.
  • burnin.start: A list containing the starting value for the burnin.
  • main.start: A list (or a list of lists, for a multithreaded run) containing the starting value for the sampling.

See Also

ergmm, summary.ergmm, plot.ergmm, predict.ergmm, as.mcmc.list.ergmm

  • Maintainer: Pavel N. Krivitsky
  • License: GPL-3 + file LICENSE
  • Last published: 2024-02-19