How can I extract metrics/data of the LSTM training progress ?
13 次查看(过去 30 天)
显示 更早的评论
While monitoring a deep learning (LSTM) training progress, how can I extract the quantities data (Training root mean square error (RMSE) , Smoothed training accuracy, Validation accuracy, Training loss, smoothed training loss, and validation loss ) at each iteration ?( suppose you want to export these data to excel).
Indeed, while training a deep (LSTM) network in matab, '' when you specify 'training-progress' as the 'Plots' value in trainingOptions and start network training, trainNetwork creates a figure and displays training metrics at every iteration. Each iteration is an estimation of the gradient and an update of the network parameters. If you specify validation data in trainingOptions, then the figure shows validation metrics each time trainNetwork validates the network. The figure plots the following: Training root mean square error (RMSE) , Smoothed training accuracy, Validation accuracy, Training loss, smoothed training loss, and validation loss."
Thank you.
Best regards,
0 个评论
采纳的回答
Jalaj Gambhir
2019-10-14
Hi,
You can use
[net,info] = trainNetwork(XTrain,YTrain,layers,options);
while training a network, to access 'info' struct. This struct contains information such as 'TrainingLoss', 'TrainingRMSE' and 'BaseLearnRate' for each iteration of training. You can refer to the documentation for more information.
更多回答(0 个)
另请参阅
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!