Why the neural network creates the same output values for the different inputs?

I created a neural network model as you can see the model code. Firstly I normalized the data between 0 and 1, then I divided the input and target data for test and validation. I see that the all validation output values (y) is the same. I checked the normalized validation input data, it doesn't contain an error.
(Xtn: Normalized input test values, Xvn: Normalized input validation values, Ytn: Normalized target test values, Y:Normalized validation output values, Ye: Denormalized validation output values)
Can you help me?
Data=xlsread('Data31.10.xlsx'); Input=Data(:,4:12); Target=Data(:,end);
I=Input';
T=Target';
A=minmax(I); Min=A(:,1); Max=A(:,2); Fark=Max-Min; In=(I-Min)./Fark;
Tmin=min(T); Tmax=max(T);
nofdata=size(In,2);
ntd=round(nofdata*trainingrate);
Xtn=In(:,1:ntd);
Xvn=In(:, ntd+1:end);
Yt=T(1:ntd);
Yv=T(ntd+1:end);
Ytn=(Yt-Tmin)./(Tmax-Tmin);
net=newff(Xtn, Ytn, [n1,n2], {'logsig', 'logsig', 'logsig'}, 'trainlm');
net=train(net,Xtn,Ytn);
y=sim(net,Xvn);
ye=y*(Tmax-Tmin)+Tmin;

Answers (1)

Where is your training data?
Typically, the data division is
train/val/test = 70%/15%/15%
Hope this helps,
Greg

1 Comment

I defined a trainingrate and I divided the data with using this rate. Xtn is the testing data, Xvn is the validation data.

Sign in to comment.

Categories

Find more on Deep Learning Toolbox in Help Center and File Exchange

Asked:

on 3 Nov 2018

Commented:

on 7 Nov 2018

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!