VBLPCM-package |
VBLPCM: Variational Bayes for the Latent Position Cluster Model for networks |
aids |
aids blogs data as a "network" object |
aids.net |
aids blogs data as a "network" object |
E_to_Y |
create an adjacency matrix from an edgelist. |
fruchterman_reingold |
Perform Fruchterman-Reingold layout of a network in 2 or more dimensions. |
gof.vblpcm |
Goodness of fit based on simulations from the fitted object. |
hops_to_hopslist |
create a handy matrix of vectors to store the hopslist |
log_like_forces |
create an initial configuration for the latent positions. |
plot.vblpcm |
plot the posterior latent positions and groupings and network |
predict.vblpcm |
Find all link probabilities |
print.vblpcm |
print the fitted vblpcm object |
samplike |
Cumulative network of positive affection within a monastery as a "network" object |
sampson |
Cumulative network of positive affection within a monastery as a "network" object |
summary.vblpcm |
summary of a fitted vblpcm object. |
VBLPCM |
VBLPCM: Variational Bayes for the Latent Position Cluster Model for networks |
vblpcmbic |
calculate the BIC for the fitted VBLPCM object |
vblpcmcovs |
create the design matrix for the network analysis |
vblpcmdrawpie |
add a piechart of group memberships of a node to a network plot; taken mainly from latentnet equivalent |
vblpcmfit |
fit the variational model through EM type iterations |
vblpcmgroups |
list the maximum VB a-posteriori group memberships. |
vblpcmKL |
print and returns the Kullback-Leibler divergence from the fitted vblpcm object to the true LPCM posterior |
vblpcmroc |
ROC curve plot for vblpcmfit |
vblpcmstart |
Generate sensible starting configuration for the variational parameter set. |
Y |
simulated.network |
Y_to_E |
calculate the edgelist for a given adjacency matrix |
Y_to_M |
calculate the missing edges as an edgelist from an adjacency matrix with NaNs indicating missing links |
Y_to_nonE |
calculate a non-edge list from an adjacency matrix |