Why is there a difference in performance error using 'nntool' and 'nftool' when the properties assumed are same?
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I have created a neural network in 'nftool' with 10 inputs and 20 outputs using 5283 samples and found that the architecture with 16 hidden layer neurons gives least performance error of 0.012. I have tried using same properties in 'nntool' and expected to get same error. These were the network properties:
Network Type: Feed-forward backprop
Input Ranges: Got from Input
Adaptation Function: LEARNGDM
Number of Layers: 2
Properties :
Layer 1 Layer 2
16 Neurons 20 Neurons
LOGSIG PURELIN
However, when I train this network I get a performance error of around 0.5. Why is the error much larger?
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