| cito-package | 'cito': Building and training neural networks |
| ALE | Accumulated Local Effect Plot (ALE) |
| ALE.citodnn | Accumulated Local Effect Plot (ALE) |
| ALE.citodnnBootstrap | Accumulated Local Effect Plot (ALE) |
| analyze_training | Visualize training of Neural Network |
| avgPool | Average pooling layer |
| cito | 'cito': Building and training neural networks |
| cnn | CNN |
| coef.citocnn | Returns list of parameters the neural network model currently has in use |
| coef.citodnn | Returns list of parameters the neural network model currently has in use |
| coef.citodnnBootstrap | Returns list of parameters the neural network model currently has in use |
| conditionalEffects | Calculate average conditional effects |
| conditionalEffects.citodnn | Calculate average conditional effects |
| conditionalEffects.citodnnBootstrap | Calculate average conditional effects |
| config_lr_scheduler | Creation of customized learning rate scheduler objects |
| config_optimizer | Creation of customized optimizer objects |
| config_tuning | Config hyperparameter tuning |
| continue_training | Continues training of a model generated with 'dnn' or 'cnn' for additional epochs. |
| continue_training.citocnn | Continues training of a model generated with 'dnn' or 'cnn' for additional epochs. |
| continue_training.citodnn | Continues training of a model generated with 'dnn' or 'cnn' for additional epochs. |
| continue_training.citodnnBootstrap | Continues training of a model generated with 'dnn' or 'cnn' for additional epochs. |
| conv | Convolutional layer |
| create_architecture | CNN architecture |
| dnn | DNN |
| e | Embeddings |
| findReTrmClasses | list of specials - taken from enum.R |
| linear | Linear layer |
| maxPool | Maximum pooling layer |
| PDP | Partial Dependence Plot (PDP) |
| PDP.citodnn | Partial Dependence Plot (PDP) |
| PDP.citodnnBootstrap | Partial Dependence Plot (PDP) |
| plot.citoarchitecture | Plot the CNN architecture |
| plot.citocnn | Plot the CNN architecture |
| plot.citodnn | Creates graph plot which gives an overview of the network architecture. |
| plot.citodnnBootstrap | Creates graph plot which gives an overview of the network architecture. |
| predict.citocnn | Predict from a fitted cnn model |
| predict.citodnn | Predict from a fitted dnn model |
| predict.citodnnBootstrap | Predict from a fitted dnn model |
| print.avgPool | Print pooling layer |
| print.citoarchitecture | Print class citoarchitecture |
| print.citocnn | Print class citocnn |
| print.citodnn | Print class citodnn |
| print.citodnnBootstrap | Print class citodnn |
| print.conditionalEffects | Print average conditional effects |
| print.conditionalEffectsBootstrap | Print average conditional effects |
| print.conv | Print conv layer |
| print.linear | Print linear layer |
| print.maxPool | Print pooling layer |
| print.summary.citodnn | Print method for class summary.citodnn |
| print.summary.citodnnBootstrap | Print method for class summary.citodnn |
| print.transfer | Print transfer model |
| residuals.citodnn | Extract Model Residuals |
| simulate_shapes | Data Simulation for CNN |
| summary.citocnn | Summary citocnn |
| summary.citodnn | Summarize Neural Network of class citodnn |
| summary.citodnnBootstrap | Summarize Neural Network of class citodnn |
| sumTerms | combine a list of formula terms as a sum |
| transfer | Transfer learning |
| tune | Tune hyperparameter |