Does Matlab has relative square error available in Neural Network toolbox?
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I have seen that MSE, SSE, MAE and SAE are possible training functions of a neural network in Matlab. Does it have relative square error available?
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Greg Heath
2015년 12월 3일
The relative (i.e., NORMALIZED) square error is the ratio of the mean-square-error of the model, MSE, to the mean-square-error of the NAIVE CONSTANT-OUTPUT MODEL, MSE00. To minimize the mse of the latter model, the constant output is just the target mean. Correspondingly, MSE00 is just the average target variance.
MSE00 = mean(var(target',1))
Since
MSE = mse(target-output);
NMSE = MSE/MSE00 % "N"ormalized, or relative, mse.
The coefficient-of-variation or Rsquared, Rsq (See WKIPEDIA)
Rsq = 1 - NMSE
is the fraction of target variance that is "explained by the model.
I have zillions of posts in both the NEWSGROUP and ANSWERS using the above variables. In some of them I have gone into more detail than I have here.
Hope this helps.
Thank you for formally accepting my answer
Greg
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Greg Heath
2015년 12월 5일
편집: Greg Heath
2015년 12월 5일
Most of the time I used R2 instead of Rsq.
SEARCH NEWSGROUP ANSWERS
NEURAL NMSE 51 HITS 100 HITS
NEURAL R2 144 HITS 113 HITS
HOPE THIS HELPS.
GREG
추가 답변 (1개)
Dave Behera
2015년 12월 2일
The only error functions available in the Neural Network Toolbox are MSE, SSE, MAE and SAE. There is no function for calculating the relative square error.
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