Is it possible to specify conditions in a formula, for example
out1 + out2 ~ in1 + in2 + in3 <with all (out1 + out2 = 1)>
a possible example:
Trying to predict a color assembled with
blue. When there are no presumptions about the model, this could possibly be done with a neural network:
library("neuralnet") red <- runif(n=50) green <- (1 - red) * runif(n=50) blue <- 1 - red - green input1 <- green^2 input2 <- sin(red) trainingdata <- data.frame(red, green, blue, input1, input2) color.net <- neuralnet(red + green + blue ~ input1 + input2, trainingdata) test.red <- runif(10) test.green <- (1 - test.red) * runif(n=10) test.input1 <- test.green^2 test.input2 <- sin(test.red) testdata <- data.frame(test.input1, test.input2) testoutcolor <- as.data.frame(compute(color.net, testdata)) colnames(testoutcolor) <- c("red", "green", "blue") testoutcolor$sum <- testoutcolor$red + testoutcolor$green + testoutcolor$blue testoutcolor
Even if the
red + green + blue = 1 the neural net would most probably not "learn" this condition by itself and only output values approximating this condition.
Is it possible to force the neural net to meet this condition?
As @Spacedman stated, in this example
blue does not add information to the model - it could be computed just with
1 - red - green. Still I would need a way to "tell" the model that there is a condition:
red + green <= 1