| coef.PLNfit | Extract model coefficients |
| coef.PLNLDAfit | Extracts model coefficients from objects returned by 'PLNLDA()' |
| coef.PLNmixturefit | Extract model coefficients |
| coefficient_path | Extract the regularization path of a PLNnetwork fit |
| compute_offset | Compute offsets from a count data using one of several normalization schemes |
| extract_probs | Extract edge selection frequency in bootstrap subsamples |
| fisher | Fisher information matrix for Theta |
| fisher.PLNfit | Fisher information matrix for Theta |
| fitted.PLNfit | Extracts model fitted values from objects returned by 'PLN()' and its variants |
| fitted.PLNmixturefit | Extracts model fitted values from objects returned by 'PLNmixture()' and its variants |
| getBestModel | Best model extraction from a collection of models |
| getBestModel.PLNmixturefamily | Best model extraction from a collection of models |
| getBestModel.PLNnetworkfamily | Best model extraction from a collection of models |
| getBestModel.PLNPCAfamily | Best model extraction from a collection of models |
| getModel | Model extraction from a collection of models |
| getModel.PLNmixturefamily | Model extraction from a collection of models |
| getModel.PLNnetworkfamily | Model extraction from a collection of models |
| getModel.PLNPCAfamily | Model extraction from a collection of models |
| mollusk | Mollusk data set |
| oaks | Oaks amplicon data set |
| PLN | Poisson lognormal model |
| PLNfamily | An R6 Class to represent a collection of PLNfit |
| PLNfit | An R6 Class to represent a PLNfit in a standard, general framework |
| PLNLDA | Poisson lognormal model towards Linear Discriminant Analysis |
| PLNLDAfit | An R6 Class to represent a PLNfit in a LDA framework |
| PLNmixture | Poisson lognormal mixture model |
| PLNmixturefamily | An R6 Class to represent a collection of PLNmixturefit |
| PLNmixturefit | An R6 Class to represent a PLNfit in a mixture framework |
| PLNmodels | PLNmodels |
| PLNnetwork | Poisson lognormal model towards sparse network inference |
| PLNnetworkfamily | An R6 Class to represent a collection of PLNnetworkfit |
| PLNnetworkfit | An R6 Class to represent a PLNfit in a sparse inverse covariance framework |
| PLNPCA | Poisson lognormal model towards Principal Component Analysis |
| PLNPCAfamily | An R6 Class to represent a collection of PLNPCAfit |
| PLNPCAfit | An R6 Class to represent a PLNfit in a PCA framework |
| plot.PLNfamily | Display the criteria associated with a collection of PLN fits (a PLNfamily) |
| plot.PLNLDAfit | LDA visualization (individual and/or variable factor map(s)) for a 'PLNPCAfit' object |
| plot.PLNmixturefamily | Display the criteria associated with a collection of PLNmixture fits (a PLNmixturefamily) |
| plot.PLNmixturefit | Mixture visualization of a 'PLNmixturefit' object |
| plot.PLNnetworkfamily | Display various outputs (goodness-of-fit criteria, robustness, diagnostic) associated with a collection of PLNnetwork fits (a 'PLNnetworkfamily') |
| plot.PLNnetworkfit | Extract and plot the network (partial correlation, support or inverse covariance) from a 'PLNnetworkfit' object |
| plot.PLNPCAfamily | Display the criteria associated with a collection of PLNPCA fits (a PLNPCAfamily) |
| plot.PLNPCAfit | PCA visualization (individual and/or variable factor map(s)) for a 'PLNPCAfit' object |
| predict.PLNfit | Predict counts of a new sample |
| predict.PLNLDAfit | Predict group of new samples |
| predict.PLNmixturefit | Prediction for a 'PLNmixturefit' object |
| prepare_data | Prepare data for use in PLN models |
| rPLN | PLN RNG |
| sigma.PLNfit | Extract variance-covariance of residuals 'Sigma' |
| sigma.PLNmixturefit | Extract variance-covariance of residuals 'Sigma' |
| stability_selection | Compute the stability path by stability selection |
| standard_error | Component-wise standard errors of Theta |
| standard_error.PLNfit | Component-wise standard errors of Theta |
| trichoptera | Trichoptera data set |
| vcov.PLNfit | Calculate Variance-Covariance Matrix for a fitted 'PLN()' model object |