Neural Network Output Problem
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Hi,
I have a feedforward network as below:
net = feedforwardnet([68 36], 'traingdm');
net.numInputs = 2;
net.inputs{1}.size = 1;
net.inputs{2}.size = 136;
net.layers{3}.size = 4;
net.inputConnect = [0 1; 1 0; 0 0];
net.trainparam.epochs = 775;
net.trainparam.lr = 0.3;
net.trainparam.mc = 0.3;
net.trainparam.showCommandLine = 1;
net.performFcn = 'mse';
net.divideParam.trainRatio = 42.01/100;
net.divideParam.valRatio = 20.95/100;
net.divideParam.testRatio = 37.04/100;

I have an Inputs matrix (137x1002 double) and a Targets matrix (4x1002 double) that used for age estimation by neural network. 136 face feature + 1 gender = 137 input cell for each of 1002 face image. it must classify to 4 groups of ages:
group 1 : 1 - 12
group 2 : 13 - 25
group 3 : 26 - 45
group 4 : 46 - 63
The target matrix filled by 0-1 values

After training this network I checked network output values, but all of values was same and repeated...

Network Training Details :
network training stoped by Validation Stop event in epoch 16.

Performance Plot

Training State

Regression

Regression R Value is very low ... I don't know why?
My NN architecture and network initializing values explained in Age Estimation article that I was study before.
what is my problem? please help me!
Thanks.
1 comentario
Sean de Wolski
el 25 de Oct. de 2012
Congratulations on having the best written Neural Networks question ever!
Respuesta aceptada
Greg Heath
el 26 de Oct. de 2012
You should always run at least 10 trials for each candidate net. For example, if I am considering H = 0:2:20 hidden nodes, I tabulate the results in 10X11 matrices. You may have just started with a poor random choice of initial weights. Try more runs. Then consider changing the design.
Your design has Nw = (136+1)*68+ (1+68+1)*36 + (36+1)*4= 11,984 unknown weights to be estimated by Ntrneq = 42.01*1002*4 =168,380 training equations. The ratio of ~ 14 is OK.
However:
I see no reason for you not to use the simple default single-input/single-hidden-layer 137-H-4 configuration using PATTERNNET ... or am I missing something?
Another avenue to pursue is the reduction of the number of inputs. PLS may be more helpful than PCA for a classification problem.
Hope this helps.
Thank you for formally accepting my answer.
Greg
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