| dnn-package | An R package for the deep neural networks probability and statistics models | 
| activation | Activation function | 
| bwdCheck | Back propagation for dnn Models | 
| bwdNN | Back propagation for dnn Models | 
| bwdNN2 | Back propagation for dnn Models | 
| CVpredErr | A function for tuning of the hyper parameters | 
| deepAFT | Deep learning for the accelerated failure time (AFT) model | 
| deepAFT.default | Deep learning for the accelerated failure time (AFT) model | 
| deepAFT.formula | Deep learning for the accelerated failure time (AFT) model | 
| deepAFT.ipcw | Deep learning for the accelerated failure time (AFT) model | 
| deepAFT.trans | Deep learning for the accelerated failure time (AFT) model | 
| deepGLM | Deep learning for the generalized linear model | 
| deepGlm | Deep learning for the generalized linear model | 
| deepSurv | Deep learning for the Cox proportional hazards model | 
| deepSurv.default | Deep learning for the Cox proportional hazards model | 
| delu | Activation function | 
| didu | Activation function | 
| dlrelu | Activation function | 
| dnn | An R package for the deep neural networks probability and statistics models | 
| dnn-doc | An R package for the deep neural networks probability and statistics models | 
| dnnControl | Auxiliary function for 'dnnFit' dnnFit | 
| dnnFit | Fitting a Deep Learning model with a given loss function | 
| dnnFit2 | Fitting a Deep Learning model with a given loss function | 
| dNNmodel | Specify a deep neural network model | 
| drelu | Activation function | 
| dsigmoid | Activation function | 
| dsurv | The Survival Distribution | 
| dtanh | Activation function | 
| elu | Activation function | 
| fwdNN | Feed forward and back propagation for dnn Models | 
| fwdNN2 | Feed forward and back propagation for dnn Models | 
| hyperTuning | A function for tuning of the hyper parameters | 
| ibs | Calculate integrated Brier Score for deepAFT | 
| ibs.deepAFT | Calculate integrated Brier Score for deepAFT | 
| ibs.default | Calculate integrated Brier Score for deepAFT | 
| idu | Activation function | 
| lrelu | Activation function | 
| mseIPCW | Mean Square Error (mse) for a survival Object | 
| optimizerAdamG | Functions to optimize the gradient descent of a cost function | 
| optimizerMomentum | Functions to optimize the gradient descent of a cost function | 
| optimizerNAG | Functions to optimize the gradient descent of a cost function | 
| optimizerSGD | Functions to optimize the gradient descent of a cost function | 
| plot.deepAFT | Plot methods in dnn package | 
| plot.dNNmodel | Plot methods in dnn package | 
| predict.deepGlm | Deep learning for the generalized linear model | 
| predict.dNNmodel | Feed forward and back propagation for dnn Models | 
| predict.dSurv | Predicted Values for a deepAFT Object | 
| print.deepAFT | print a summary of fitted deep learning model object | 
| print.deepGlm | print a summary of fitted deep learning model object | 
| print.deepSurv | print a summary of fitted deep learning model object | 
| print.dNNmodel | print a summary of fitted deep learning model object | 
| print.summary.deepAFT | print a summary of fitted deep learning model object | 
| print.summary.deepGlm | print a summary of fitted deep learning model object | 
| print.summary.deepSurv | print a summary of fitted deep learning model object | 
| print.summary.dNNmodel | print a summary of fitted deep learning model object | 
| psurv | The Survival Distribution | 
| qsurv | The Survival Distribution | 
| rcoxph | The Survival Distribution | 
| relu | Activation function | 
| residuals.deepAFT | Calculate Residuals for a deepAFT Fit. | 
| residuals.deepGlm | Deep learning for the generalized linear model | 
| residuals.dSurv | Calculate Residuals for a deepAFT Fit. | 
| rSurv | The Survival Distribution | 
| rsurv | The Survival Distribution | 
| sigmoid | Activation function | 
| summary.deepAFT | print a summary of fitted deep learning model object | 
| summary.deepGlm | Deep learning for the generalized linear model | 
| summary.deepSurv | Deep learning for the Cox proportional hazards model | 
| summary.dNNmodel | print a summary of fitted deep learning model object | 
| survfit.dSurv | Compute a Survival Curve from a deepAFT or a deepSurv Model |