Why deep learning code does not work well?
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Hi, I have trained, validated and tested my neural network with nprtool, using trainscg and croos-entropy.
The inputs are all in a single matrix and even the targets.
My problem occurs when I give the net more than 11264 columns as input and target (in my case I add 1024 columns every time, step by step), because the confusion matrix and the ROC curve give low performances. In fact, when I give until 10240 columns as input and target, the net has a precision of 98/99% at most but when the dimension increases, the precision drops to 91%....
I don't know how, sincerly... Con you help me?
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