Plot sensitivities of a neural network model
Function to plot the sensitivities created by SensAnalysisMLP
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ComputeHessMeasures(sens)
sens
: SensAnalysisMLP
object created by SensAnalysisMLP
.SensAnalysisMLP
object with the sensitivities calculated
## Load data ------------------------------------------------------------------- data("DAILY_DEMAND_TR") fdata <- DAILY_DEMAND_TR ## Parameters of the NNET ------------------------------------------------------ hidden_neurons <- 5 iters <- 250 decay <- 0.1 ################################################################################ ######################### REGRESSION NNET ##################################### ################################################################################ ## Regression dataframe -------------------------------------------------------- # Scale the data fdata.Reg.tr <- fdata[,2:ncol(fdata)] fdata.Reg.tr[,3] <- fdata.Reg.tr[,3]/10 fdata.Reg.tr[,1] <- fdata.Reg.tr[,1]/1000 # Normalize the data for some models preProc <- caret::preProcess(fdata.Reg.tr, method = c("center","scale")) nntrData <- predict(preProc, fdata.Reg.tr) #' ## TRAIN nnet NNET -------------------------------------------------------- # Create a formula to train NNET form <- paste(names(fdata.Reg.tr)[2:ncol(fdata.Reg.tr)], collapse = " + ") form <- formula(paste(names(fdata.Reg.tr)[1], form, sep = " ~ ")) set.seed(150) nnetmod <- nnet::nnet(form, data = nntrData, linear.output = TRUE, size = hidden_neurons, decay = decay, maxit = iters) # Try SensAnalysisMLP sens <- NeuralSens::SensAnalysisMLP(nnetmod, trData = nntrData, plot = FALSE)