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.