PLNnetworkfit
objectR/PLNnetworkfit-S3methods.R
plot.PLNnetworkfit.Rd
Extract and plot the network (partial correlation, support or inverse covariance) from a PLNnetworkfit
object
an R6 object with class PLNnetworkfit
character. Value of the weight of the edges in the network, either "partial_cor" (partial correlation) or "support" (binary). Default is "partial_cor"
.
the type of output used: either 'igraph' or 'corrplot'. Default is 'igraph'
.
Length 2 color vector. Color for positive/negative edges. Default is c("#F8766D", "#00BFC4")
. Only relevant for igraph output.
if TRUE
, isolated node are remove before plotting. Only relevant for igraph output.
vector of character. The labels of the nodes. The default will use the column names ot the response matrix.
an optional igraph layout. Only relevant for igraph output.
logical. Should the final network be displayed or only sent back to the user. Default is TRUE
.
Not used (S3 compatibility).
Send back an invisible object (igraph or Matrix, depending on the output chosen) and optionally displays a graph (via igraph or corrplot for large ones)
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 = 7.54443
sparsifying penalty = 6.96857
sparsifying penalty = 6.436665
sparsifying penalty = 5.94536
sparsifying penalty = 5.491556
sparsifying penalty = 5.07239
sparsifying penalty = 4.685219
sparsifying penalty = 4.3276
sparsifying penalty = 3.997278
sparsifying penalty = 3.692169
sparsifying penalty = 3.410349
sparsifying penalty = 3.15004
sparsifying penalty = 2.9096
sparsifying penalty = 2.687513
sparsifying penalty = 2.482377
sparsifying penalty = 2.2929
sparsifying penalty = 2.117885
sparsifying penalty = 1.956228
sparsifying penalty = 1.806911
sparsifying penalty = 1.668991
sparsifying penalty = 1.541598
sparsifying penalty = 1.42393
sparsifying penalty = 1.315242
sparsifying penalty = 1.214851
sparsifying penalty = 1.122122
sparsifying penalty = 1.036472
sparsifying penalty = 0.9573588
sparsifying penalty = 0.8842844
sparsifying penalty = 0.8167877
sparsifying penalty = 0.754443
#> Post-treatments
#> DONE!
myNet <- getBestModel(fits)
if (FALSE) {
plot(myNet)
}