NN function approximation: What's wrong with my code?
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I have just started learning neural networks and have been stuck on a homework question for quite a while. the question is as follows:
Design a feed forward multi-layer neural network to approximate the function y=sin(x1)+cos(x2). Here, -5<x1<5 and 0<x2<5. Please use x1 = (rand(1,50)-0.5)*10; x2 = rand(1,50)*5; to get the samples to train the neural network. Finally, please draw the prediction error series y - ynet for the inputs x1=-5:0.1:5 and x2=0:0.05:5.
Here's my code:
x1 = (rand(1,50)-0.5)*10; %training sample one
x2 = rand(1,50)*5; %training sample two
x = [x1;x2];
y=sin(x1)+cos(x2); %targeted output
net = newff(minmax(x),[20 1],{'tansig','purelin'},'trainlm');
net.trainparam.epochs = 10000;
net.trainparam.goal = 1e-25;
net.trainparam.lr = 0.01;
net = train(net,x,y);
input1 = -5:0.1:5;
input2 = 0:0.05:5;
input = [input1;input2];
y=sin(input1)+cos(input2);
ynet = net(input);
plot(y-ynet)
grid
The prediction error I get is very high.
Thanks in advance
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