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Assume I have this matrix, A :

A=[ 25     11   2010    10  23  75 
    30     11   2010    11  24  45 
    31     12   2010    19  24  44 
    31     12   2010    22  27  32 
    1      1    2011    14  27  27 
    2      12   2011    15  28  30 
    3      12   2011    16  24  42 ];

The first 5 columns represent the inputs of some measured parameters and the last column is the corresponding output. The number of rows is the number of taking these measurements.

I want to use Matlab Neural network GRNN with the function newgrnn ( or any other NN function ) to train the data up to the 5th row and test the remaining 2 rows inputs to evaluate their corresponding outputs. I have tried many many times to do this but it always gives me error and the program did not run correctly. I have looked to newgrnn help example but it is only for one input while I have in this example 5 inputs.

My question is how do we put the inputs and the output in the newgrnn function structure. Actually, I have very large matrix with 22 inputs and one output and the size of my matrix is 26352 by 23 but the above is only sample example.

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You have tried many times already -- what exactly have you tried? Can you show us some code of what you've tried? –  mathematical.coffee Dec 19 '11 at 1:36

1 Answer 1

Since you haven't given any examples of what you've tried and what errors you get from your attempts, I'll have to give you a fairly generic answer.

Have a look at the newgrnn help file.

net = newgrnn(P,T,spread) takes three inputs,

P         R-by-Q matrix of Q input vectors
T         S-by-Q matrix of Q target class vectors
spread    Spread of radial basis functions (default = 1.0)

So if your matrix A always has just the last column being the outputs (target class vectors) then the outputs (target class vectors) are A[1:5,end], and the inputs are A[1:5,1:(end-1)]. These say "first 5 rows of A, and the last column", and "first 5 rows of A, and all but the last column" respectively.

Then (simply following the example in the newgrnn help file, you will have to tweak to your own particular A):

net = newgrnn( A[1:5,1:(end-1)], A[1:5,end] )
% predict new values
Y = sim(net, A[6:7,1:(end-1)])

I think you should also read the Matlab help file for indexing arrays and matrices.

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Thanks. But I think the extracted matrices should be transposed to make the inputs and the output matrices have the same number of columns. If I run the above newgrnn code, it gives: ??? Error using ==> newgrnn at 80 Inputs and Targets have different numbers of columns. –  user488182 Dec 19 '11 at 19:38
    
ah, you're right, P needs to be R rows Q columns, and T needs to be S rows Q columns. Transposing will get rid of that error, but I don't know enough about neural networks to tell you whether that's the correct thing to do intellectually. But since you are using 5 rows of A to predict the other 2, why don't you try and see if it gives you what you expect? –  mathematical.coffee Dec 19 '11 at 23:55

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