I am working with the neuralnet package in R (I am more familiar with nnet).
My target variable is a 2 label class. (Phone_Sales 1/0). I have a train and test set. Also, all variable were normalized to [0,1] scale.
My nn model is:
wireless_model <- neuralnet(formula = Phone_sale ~ Topflight + Balance + Qual_miles + cc1_miles. + cc2_miles. + cc3_miles. + Bonus_miles + Bonus_trans + Flight_miles_12mo + Flight_trans_12 + Online_12 + Email + Club_member + Any_cc_miles_12mo, data = wireless_train, hidden=1, linear.output=FALSE)
the predicted results from
wireless_model$net.result are produced as floats between 0 and 1 (in fact almost all hover very close to zero). ie .07 and .21, etc instead of 1 or 0.
So obviously when I compare my train to my test- my prediction is bad b/c of the two different types of DV.
I want the predicted results to be in the form of either 1 or 0. I am sure I did not use specify a correct setting somewhere in the neuralnet package.
A guess is that I may need to set the "family" in the formula for logistic so I get on 1 or 0 output. But not sure how that works in this package.