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I have 5x7 matrix for a specific character A i.e.

           P= 
               1     0     0     1     1
               1     0     0     0     1
               1     0     0     0     1
               1     0     0     0     1
               0     0     1     0     0
               0     1     1     1     0
               0     1     1     1     0

Similarly I train my network for all other 4 characters. Now I am confused about Target T, whether I take 5x5 diagonal matrix for as common Target for all 5 characters or shall I consider different 5x5 or any other matrix for the five characters in training:

          [net tr] = train(net,P,T);

I trained the network in a loop for 10 different variants of handwritten above mentioned 5 characters and then used the sim() method,

          [a,num]=sim(net,P)

for a completely different (untrained) variant of A and I got the following result

            a =

                0.5000    0.6861    0.6861    0.6861    0.5000
               -0.0000    0.8818    0.8818    0.8818   -0.0000
               -0.0000    0.6815    0.6815    0.6815   -0.0000
                0.0000   -0.2593   -0.2593   -0.2593    0.0000
                0.5000    0.4047    0.4047    0.4047    0.5000


            num =

                  [] 

Now i am concerned how would I classify and conclude that the above is the code for A. I tried multiple times with different test variants of the same character and they give very random results as 'a' and 'num', Kindly guide me for my confusion regarding selection of targets for different characters and also about the classification of result for characters.

Any Help is appreciated in advance

Edit:

I train for 20 variants of all five characters in nested loop. Then I test.

P is the binary image for Character A and it is mapped as you get it.

I create my network like :

net = newff(P,T,[35], {'logsig'}) %net.performFcn = 'sse';
net.divideParam.trainRatio = 1; % training set [%] 
net.divideParam.valRatio = 0; % validation set [%] 
net.divideParam.testRatio = 0; % test set [%] 
net.trainParam.goal = 0.001;
share|improve this question
    
Are you using a specific data-mining platform? Or is it your own implementation? How are you training the neural network? Do you use cross validation for testing your classifier? (during cross validation, evaluation also takes place). Please elaborate. –  Nejc Nov 5 '12 at 10:43
    
i am using neural network toolbox for character recognition. I am training neural network by providing a 5x7 matrix of all 5 mentioned characters along their variants and a 5x5 diagonal matrix as target. I have no idea of cross validation for testing. Infact thats what i want to ask how to classify or test –  Najeebullah Shah Nov 5 '12 at 16:12
    
For recognizing the different characters, are you using a single ANN? The matrix you provided in your question show the representation of character A. What about the other characters? –  soufanom Nov 5 '12 at 18:27
    
I do not know why are you using a 5x5 diagonal matrix for target? The usual practice is to use 1xn vector, where n is the number of classes (in your case 5). The target vectors are then [1,0,0,0,0] for A, [0,1,0,0,0] for B etc. Then when you want to evaluate a new matrix (which has not been seen yet by the model), its class is then the index of max element in the output. For example [0, 0, 0.9, 0.1, 0] is a vector for C. –  Nejc Nov 5 '12 at 18:34
2  
How does the classifier perform on an example from the training dataset? You should train your model for more iterations and then perform cross-validation to get an estimation of your classification accuracy on new examples. I also suggest you look at the class.coursera.org/ml/lecture/preview/index at the Neural Network part. You get really nice code framework, where you can analyze everything. You also get a good picture of what forward propagation and back propagatioon are. –  Nejc Nov 7 '12 at 10:32

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