How to save loss, rmse, mae, and mape in every training epoch?

조회 수: 6 (최근 30일)
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a a 2020년 10월 29일
답변: Pratik 2024년 12월 12일
Is there any suggestion on how to save the loss, rmse, mae, and mape in every training epoch? I want to compare them in condition of different parameters later.
Cheers
FYI I calculate the rmse, mae, and mape in the end like this:
net = trainNetwork(XTrain,YTrain,layers,options);
net = predictAndUpdateState(net,XTrain);
[net,YPred] = predictAndUpdateState(net,XTest);
YPred = sig(1)*YPred + mu(1);
YTest = dataTest(1,:);
rmse = sqrt(mean((YPred-YTest).^2))
mae = mean(abs(YPred-YTest))
mape = mean(abs((YPred-YTest)./YTest))*100

답변 (1개)

Pratik
Pratik 2024년 12월 12일
Hi,
To monitor the metrics such as loss, rmse and etc, training options can be used. Also built in metric object can be used to store the values to use later.
Please refer to the following documentation for more information:

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