garson | Variable importance using Garson's algorithm |
garson.mlp | Variable importance using Garson's algorithm |
garson.nn | Variable importance using Garson's algorithm |
garson.nnet | Variable importance using Garson's algorithm |
garson.numeric | Variable importance using Garson's algorithm |
garson.train | Variable importance using Garson's algorithm |
lekprofile | Sensitivity analysis based on Lek's profile method |
lekprofile.default | Sensitivity analysis based on Lek's profile method |
lekprofile.mlp | Sensitivity analysis based on Lek's profile method |
lekprofile.nnet | Sensitivity analysis based on Lek's profile method |
lekprofile.train | Sensitivity analysis based on Lek's profile method |
neuraldat | Simulated dataset for function examples |
neuralskips | Get weights for the skip layer in a neural network |
neuralskips.nnet | Get weights for the skip layer in a neural network |
neuralweights | Get weights for a neural network |
neuralweights.mlp | Get weights for a neural network |
neuralweights.nn | Get weights for a neural network |
neuralweights.nnet | Get weights for a neural network |
neuralweights.numeric | Get weights for a neural network |
olden | Variable importance using connection weights |
olden.mlp | Variable importance using connection weights |
olden.nn | Variable importance using connection weights |
olden.nnet | Variable importance using connection weights |
olden.numeric | Variable importance using connection weights |
olden.train | Variable importance using connection weights |
plotnet | Plot a neural network model |
plotnet.mlp | Plot a neural network model |
plotnet.nn | Plot a neural network model |
plotnet.nnet | Plot a neural network model |
plotnet.numeric | Plot a neural network model |
plotnet.train | Plot a neural network model |
pred_sens | Predicted values for Lek profile method |