Fit the Mixture of Experts Latent Position Cluster Model to Network Data


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Documentation for package ‘MEclustnet’ version 1.2.2

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MEclustnet-package MEclustnet: A package for model-based clustering of nodes in a network, accounting for covariates.
calclambda Title Compute mixing proportions
calcloglikelihood Calculate the log likelihood function of the data.
calcm Totals the number of observations in each cluster.
calcpis Calculate link probabilities.
formatting.covars Reformat matrix of covariates.
invariant Account for invariance of configurations.
labelswitch Label switching correction.
lawyers.adjacency.advice Adjacency matrix detailing the presence or absence of advice links between the 'Lazega Lawyers'.
lawyers.adjacency.coworkers Adjacency matrix detailing the presence or absence of coworker links between the 'Lazega Lawyers'.
lawyers.adjacency.friends Adjacency matrix detailing the presence or absence of friendship links between the 'Lazega Lawyers'.
lawyers.covariates A matrix of covariates of the 'Lazega Lawyers'.
MEclustnet MEclustnet: A package for model-based clustering of nodes in a network, accounting for covariates.
plotMEclustnet Plot latent position network.
summaryMEclustnet Summary of MEclustnet object.
updatebeta Update the logistic regression parameters in the link probabilities model.
updateK Update the cluster membership vector.
updatemu Update the mean of each cluster.
updatesigma2 Update variances in each cluster.
updatetau Update the logistic regression parameters in the mixing proportions model.
updatez Update step for the latent locations.
us.twitter.adjacency Directed adjacency matrix detailing the presence or absence of Twitter friend/follower links between US politicians.
us.twitter.covariates A matrix of covariates of the US politicians.