Data Science Asked on December 11, 2021
I need to predict technical aggregate condition using vibration monitoring data. We consider this data to be nonstationary i.e. distribution parameters and descriptive statistics are not constant. I found that one of the best algorithms for such tasks in Learn++.NSE and we us it with MLP as a base classifier.
As I know, it’s necessary no normalize data for operations with ANN. We decided to normalize using mean, stdev and sigmoidal function. We train networks of ensemble with sets with different values distribution parameters.
So, my questions are the following
Batch normalization is critical technique for fast learning speed and generalization [8]. In this paper, batch temporal normalization layer is proposed for stationarity of input time series.
Answered by Donghyun Kwak on December 11, 2021
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