| .add_modelinfo | Add model information to a personalised-model-ctree |
| .modelfit | Fit function when model object is given |
| .prepare_args | Prepare input for ctree/cforest from input of pmtree/pmforest |
| binomial_glm_plot | Plot for a given logistic regression model (glm with binomial family) with one binary covariate. |
| coef.pmtree | Methods for pmtree |
| coeftable.survreg | Table of coefficients for survreg model |
| coxph_plot | Survival plot for a given coxph model with one binary covariate. |
| gettree.pmforest | Compute model-based forest from model. |
| lm_plot | Density plot for a given lm model with one binary covariate. |
| logLik.pmodel_identity | Objective function of personalised models |
| logLik.pmtree | Extract log-Likelihood |
| node_pmterminal | Panel-Generator for Visualization of pmtrees |
| objfun | Objective function |
| objfun.glm | Objective function |
| objfun.lm | Objective function |
| objfun.pmodel_identity | Objective function of personalised models |
| objfun.pmtree | Objective function of a given pmtree |
| objfun.survreg | Objective function |
| one_factor | Check if model has only one factor covariate. |
| plot.heterogeneity_test | Test if personalised models improve upon base model. |
| pmforest | Compute model-based forest from model. |
| pmodel | Personalised model |
| pmtest | Test if personalised models improve upon base model. |
| pmtree | Compute model-based tree from model. |
| predict.pmtree | pmtree predictions |
| print.pmtree | Methods for pmtree |
| print.summary.pmtree | Methods for pmtree |
| rss | Residual sum of squares |
| rss.default | Residual sum of squares |
| summary.pmtree | Methods for pmtree |
| survreg_plot | Survival plot for a given survreg model with one binary covariate. |
| varimp.pmforest | Variable Importance for pmforest |