| as_adjmat | An alternative to 'as.matrix' to retrieve adjacency matrix fast |
| as_adjmat.formula | An alternative to 'as.matrix' to retrieve adjacency matrix fast |
| as_adjmat.list | An alternative to 'as.matrix' to retrieve adjacency matrix fast |
| as_adjmat.matrix | An alternative to 'as.matrix' to retrieve adjacency matrix fast |
| as_adjmat.network | An alternative to 'as.matrix' to retrieve adjacency matrix fast |
| AVAILABLE_STATS | Count Network Statistics |
| blockdiagonalize | Block-diagonal models using 'ergm' |
| check_convergence | Check the convergence of ergmito estimates |
| check_support | Check the convergence of ergmito estimates |
| coef.ergmito | Estimation of ERGMs using Maximum Likelihood Estimation (MLE) |
| count_stats | Count Network Statistics |
| count_stats.formula | Count Network Statistics |
| count_stats.list | Count Network Statistics |
| ergmito | Estimation of ERGMs using Maximum Likelihood Estimation (MLE) |
| ergmito_boot | Bootstrap of ergmito |
| ergmito_boot.ergmito | Bootstrap of ergmito |
| ergmito_boot.formula | Bootstrap of ergmito |
| ergmito_formulae | Processing formulas in 'ergmito' |
| ergmito_gof | Goodness of Fit diagnostics for ERGMito models |
| ergmito_loglik | Processing formulas in 'ergmito' |
| ergm_blockdiag | Block-diagonal models using 'ergm' |
| exact_gradient | Vectorized calculation of ERGM exact log-likelihood |
| exact_gradient.default | Vectorized calculation of ERGM exact log-likelihood |
| exact_gradient.ergmito_ptr | Vectorized calculation of ERGM exact log-likelihood |
| exact_hessian | Vectorized calculation of ERGM exact log-likelihood |
| exact_loglik | Vectorized calculation of ERGM exact log-likelihood |
| exact_loglik.default | Vectorized calculation of ERGM exact log-likelihood |
| exact_loglik.ergmito_ptr | Vectorized calculation of ERGM exact log-likelihood |
| extract.ergmito | Extract function to be used with the 'texreg' package. |
| fivenets | Example of a group of small networks |
| formula.ergmito | Estimation of ERGMs using Maximum Likelihood Estimation (MLE) |
| geodesic | Geodesic distance matrix (all pairs) |
| geodesic.list | Geodesic distance matrix (all pairs) |
| geodesic.matrix | Geodesic distance matrix (all pairs) |
| geodesic.network | Geodesic distance matrix (all pairs) |
| geodesita | Geodesic distance matrix (all pairs) |
| gof_ergmito | Goodness of Fit diagnostics for ERGMito models |
| induced_submat | Extract a submatrix from a network |
| induced_submat.list | Extract a submatrix from a network |
| induced_submat.matrix | Extract a submatrix from a network |
| induced_submat.network | Extract a submatrix from a network |
| is_directed | Utility functions to query network dimensions |
| is_directed.default | Utility functions to query network dimensions |
| is_directed.ergmito | Utility functions to query network dimensions |
| is_directed.formula | Utility functions to query network dimensions |
| is_directed.list | Utility functions to query network dimensions |
| is_directed.network | Utility functions to query network dimensions |
| logLik.ergmito | Estimation of ERGMs using Maximum Likelihood Estimation (MLE) |
| matrix_to_network | Manipulation of network objects |
| matrix_to_network.list | Manipulation of network objects |
| matrix_to_network.matrix | Manipulation of network objects |
| nedges | Utility functions to query network dimensions |
| nedges.ergmito | Utility functions to query network dimensions |
| nedges.formula | Utility functions to query network dimensions |
| nedges.list | Utility functions to query network dimensions |
| nedges.matrix | Utility functions to query network dimensions |
| nedges.network | Utility functions to query network dimensions |
| new_ergmito_ptr | Creates a new 'ergmito_ptr' |
| new_rergmito | ERGMito sampler |
| nnets | Utility functions to query network dimensions |
| nnets.ergmito | Utility functions to query network dimensions |
| nnets.formula | Utility functions to query network dimensions |
| nnets.list | Utility functions to query network dimensions |
| nnets.matrix | Utility functions to query network dimensions |
| nnets.network | Utility functions to query network dimensions |
| nobs.ergmito | Estimation of ERGMs using Maximum Likelihood Estimation (MLE) |
| nvertex | Utility functions to query network dimensions |
| nvertex.ergmito | Utility functions to query network dimensions |
| nvertex.formula | Utility functions to query network dimensions |
| nvertex.list | Utility functions to query network dimensions |
| nvertex.matrix | Utility functions to query network dimensions |
| nvertex.network | Utility functions to query network dimensions |
| plot.ergmito | Function to visualize the optimization surface |
| plot.ergmito_gof | Goodness of Fit diagnostics for ERGMito models |
| powerset | Power set of Directed Graphs of size 'n' |
| predict.ergmito | Prediction method for 'ergmito' objects |
| print.ergmito | Estimation of ERGMs using Maximum Likelihood Estimation (MLE) |
| print.ergmito_boot | Bootstrap of ergmito |
| print.ergmito_gof | Goodness of Fit diagnostics for ERGMito models |
| print.ergmito_sampler | ERGMito sampler |
| print.ergmito_summary | Estimation of ERGMs using Maximum Likelihood Estimation (MLE) |
| rbernoulli | Random Bernoulli graph |
| same_dist | Compare pairs of networks to see if those came from the same distribution |
| same_dist.matrix | Compare pairs of networks to see if those came from the same distribution |
| same_dist.network | Compare pairs of networks to see if those came from the same distribution |
| simulate.ergmito | Draw samples from a fitted 'ergmito' model |
| splitnetwork | Block-diagonal models using 'ergm' |
| summary.ergmito | Estimation of ERGMs using Maximum Likelihood Estimation (MLE) |
| vcov.ergmito | Estimation of ERGMs using Maximum Likelihood Estimation (MLE) |
| [.ergmito_sampler | ERGMito sampler |