mlvsbm_log_likelihood {MLVSBM} | R Documentation |
Compute the complete log likelihood of a multilevel network for a given clustering of the nodes.
Description
This function is useful to compute the likelihood for clusters obtained by different methods.
Usage
mlvsbm_log_likelihood(mlv, clustering)
Arguments
mlv |
A MLVSBM object, the network data |
clustering |
A list of 2 vectors of integers of the same length as the number of node of each level. |
Value
A numeric, the log likelihood of the multilevel network for the given clustering.
Examples
my_mlvsbm <- MLVSBM::mlvsbm_simulate_network(
n = list(I = 40, O = 20), # Number of nodes for the lower level and the upper level
Q = list(I = 2, O = 2), # Number of blocks for the lower level and the upper level
pi = c(.3, .7), # Block proportion for the upper level, must sum to one
gamma = matrix(c(.9, .2, # Block proportion for the lower level,
.1, .8), # each column must sum to one
nrow = 2, ncol = 2, byrow = TRUE),
alpha = list(I = matrix(c(.8, .2,
.2, .1),
nrow = 2, ncol = 2, byrow = TRUE), # Connection matrix
O = matrix(c(.99, .3,
.3, .1),
nrow = 2, ncol = 2, byrow = TRUE)),# between blocks
directed = list(I = FALSE, O = FALSE), # Are the upper and lower level directed or not ?
affiliation = "preferential") # How the affiliation matrix is generated
mlvsbm_log_likelihood(mlv = my_mlvsbm, clustering = my_mlvsbm$memberships)
[Package MLVSBM version 0.2.4 Index]