I am trying to use LSTM to predict a time series data as you can see in the following image, the predicted graphs is very noisy:
The original data is looking like this:
That I normalized it like this and fed it to the LSTM network:
Is there a way to get better result with less noise?
EDIT: I use keras
implementation of LSTM and sklearn.preprocessing.normalize
library for normalization.
sklearn.preprocessing.normalize
for normalization that you can see it's result in the last pic. I also usekears
implementation of LSTM. $\endgroup$