Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

The problem I've encountered after trying to train neural networks isn't a new one : The fitted values I'm getting are all the same. Here's some oversimplified code as an example:

a <- c( 123, 223, 234, 226, 60)  
b <- c(60, 90, 53, 54, 91)  
d <- c(40,100,207,290,241)  
q <- cbind(a,b,d)  
nn <- neuralnet(a~b+d,data=q,hidden=2,threshold=0.01,err.fc="sse")  

Previous answers I have stumbled upon suggest using nnet instead. I am getting the same results though, unless I set the decay argument to a value not equal to 0. Instead of blindly using the decay option, just because it seems to "work" though, I would appreciate understanding what goes wrong with my neuralnet model to begin with.

share|improve this question
Yes quite puzzling, it seems to set the reults to the mean of a. –  Dirk Nachbar Apr 11 '11 at 16:10

2 Answers 2

up vote 3 down vote accepted

So, after playing around with my original data set using both neuralnet and nnet, I found out what the problem is. It's about the randomly chosen initial weights. The range of values that neuralnet assigns to them leads to this weird solution. However, when I tried to use the startweights statement to manually set the starting weights to values I got from nnet (which returned appropriate fitted values there), I got an "algorithm did not converge" error. So I guess I will just have to give up on neuralnet's plots and stick to nnet.

share|improve this answer

I have faced similar problem recently, and thanks to George Dontas, I got the solution. Try following:

nn <- nnet(a~b+d,data=q,size=2, linout=TRUE, skip=TRUE, MaxNWts=10000, trace=FALSE,maxit=100)

Reason would be, without the skip layer connections, the neural network architecture is unable to correctly approximate the model. Such an option in neuralnet is not available but you can use nnet as an alternative.

You can refer my problem here

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.