R/PLNnetworkfamily-S3methods.R
stability_selection.Rd
This function computes the StARS stability criteria over a path of penalties. If a path has already been computed, the functions stops with a message unless force = TRUE
has been specified.
stability_selection(
Robject,
subsamples = NULL,
control = PLNnetwork_param(),
force = FALSE
)
an object with class PLNnetworkfamily
, i.e. an output from PLNnetwork()
a list of vectors describing the subsamples. The number of vectors (or list length) determines th number of subsamples used in the stability selection. Automatically set to 20 subsamples with size 10*sqrt(n)
if n >= 144
and 0.8*n
otherwise following Liu et al. (2010) recommendations.
a list controlling the main optimization process in each call to PLNnetwork. See PLNnetwork()
for details.
force computation of the stability path, even if a previous one has been detected.
the list of subsamples. The estimated probabilities of selection of the edges are stored in the fields stability_path
of the initial Robject with class PLNnetworkfamily
data(trichoptera)
trichoptera <- prepare_data(trichoptera$Abundance, trichoptera$Covariate)
fits <- PLNnetwork(Abundance ~ 1, data = trichoptera)
#>
#> Initialization...
#> Adjusting 30 PLN with sparse inverse covariance estimation
#> Joint optimization alternating gradient descent and graphical-lasso
#> sparsifying penalty = 7.541317
sparsifying penalty = 6.965695
sparsifying penalty = 6.43401
sparsifying penalty = 5.942907
sparsifying penalty = 5.48929
sparsifying penalty = 5.070297
sparsifying penalty = 4.683286
sparsifying penalty = 4.325815
sparsifying penalty = 3.995629
sparsifying penalty = 3.690646
sparsifying penalty = 3.408942
sparsifying penalty = 3.148741
sparsifying penalty = 2.9084
sparsifying penalty = 2.686404
sparsifying penalty = 2.481353
sparsifying penalty = 2.291954
sparsifying penalty = 2.117011
sparsifying penalty = 1.955421
sparsifying penalty = 1.806166
sparsifying penalty = 1.668303
sparsifying penalty = 1.540962
sparsifying penalty = 1.423342
sparsifying penalty = 1.3147
sparsifying penalty = 1.21435
sparsifying penalty = 1.121659
sparsifying penalty = 1.036044
sparsifying penalty = 0.9569638
sparsifying penalty = 0.8839195
sparsifying penalty = 0.8164507
sparsifying penalty = 0.7541317
#> Post-treatments
#> DONE!
if (FALSE) {
n <- nrow(trichoptera)
subs <- replicate(10, sample.int(n, size = n/2), simplify = FALSE)
stability_selection(nets, subsamples = subs)
}