R/PLNnetworkfamily-S3methods.R
extract_probs.Rd
Extracts edge selection frequency in networks reconstructed from bootstrap subsamples during the stars stability selection procedure, as either a matrix or a named vector. In the latter case, edge names follow igraph naming convention.
an object with class PLNnetworkfamily
, i.e. an output from PLNnetwork()
penalty used for the bootstrap subsamples
Integer index of the model to be returned. Only the first value is taken into account.
a character for the criterion used to performed the selection. Either
"BIC", "ICL", "EBIC", "StARS", "R_squared". Default is ICL
for PLNPCA
, and BIC
for PLNnetwork
.
If StARS (Stability Approach to Regularization Selection) is chosen and stability selection
was not yet performed, the function will call the method stability_selection()
with default argument.
output format. Either a matrix (default) or a named vector.
tolerance for rounding error when comparing penalties.
Either a matrix or named vector of edge-wise probabilities. In the latter case, edge names follow igraph convention.
data(trichoptera)
trichoptera <- prepare_data(trichoptera$Abundance, trichoptera$Covariate)
nets <- PLNnetwork(Abundance ~ 1 + offset(log(Offset)), data = trichoptera)
#>
#> Initialization...
#> Adjusting 30 PLN with sparse inverse covariance estimation
#> Joint optimization alternating gradient descent and graphical-lasso
#> sparsifying penalty = 3.638537
sparsifying penalty = 3.360811
sparsifying penalty = 3.104283
sparsifying penalty = 2.867336
sparsifying penalty = 2.648475
sparsifying penalty = 2.446319
sparsifying penalty = 2.259593
sparsifying penalty = 2.087121
sparsifying penalty = 1.927812
sparsifying penalty = 1.780664
sparsifying penalty = 1.644748
sparsifying penalty = 1.519205
sparsifying penalty = 1.403246
sparsifying penalty = 1.296137
sparsifying penalty = 1.197204
sparsifying penalty = 1.105823
sparsifying penalty = 1.021416
sparsifying penalty = 0.9434523
sparsifying penalty = 0.8714394
sparsifying penalty = 0.8049232
sparsifying penalty = 0.7434841
sparsifying penalty = 0.6867346
sparsifying penalty = 0.6343167
sparsifying penalty = 0.5858998
sparsifying penalty = 0.5411786
sparsifying penalty = 0.4998709
sparsifying penalty = 0.4617162
sparsifying penalty = 0.4264738
sparsifying penalty = 0.3939214
sparsifying penalty = 0.3638537
#> Post-treatments
#> DONE!
if (FALSE) {
stability_selection(nets)
probs <- extract_probs(nets, crit = "StARS", format = "vector")
probs
}
if (FALSE) {
## Add edge attributes to graph using igraph
net_stars <- getBestModel(nets, "StARS")
g <- plot(net_stars, type = "partial_cor", plot=F)
library(igraph)
E(g)$prob <- probs[as_ids(E(g))]
g
}