Optimal hidden nodes number
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Hello everybody,
In order to determine optimal hidden neurons, Trial and error algorithm has been used (trial = 10, 10 < H < 100, dH = 100). I get the table on top but i can not determine the optimal hidden neurons. The table contains (Trials, Hidden neurons, test_mse, train_mse, val_mse, test_R, train_R, val_R)
Please i need your help. Thank you.
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Greg Heath
el 28 de En. de 2018
BASIC MATLAB NN DESIGN ASSUMPTIONS
The summary statistics of the Training, Validation and Test subsets are satisfactorially similar.
Training data is used to estimate net parameters
Validation data is used to verify ability to generalize (i.e., ability to obtain satisfactory performance on nontraining data)
Test data is used to obtain unbiased estimates of performance on non-design (including unseen) data
Overfitting occurs when the number of training parameters to be estimated exceeds the number of training equations
Overtraining occurs when the training exceeds the point at which the trend of the nontraining error is decreasing.
Normalized Mean Square error and Rsquare (Rsquare = 1-NMSE) tend to be sufficient for characterizing nonclassifier performance.
The normalization denominator for NMSE = MSE/MSEref is the minimum MSE for a constant output model. The minimizing constant output and corresponding MSEref are
y = mean(t,2)
MSEref = mse(t-mean(t,2)) = mean(variance(t'),1)
Crossentropy is the default minimization quantity for MATLAB classifiers. However, the ultimate minimization goal is classification error rate.
Hope this helps.
Thank you for formally accepting my answer
Greg
1 comentario
Hamza Ali
el 29 de En. de 2018
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