How to pre-process training data, the x-y coordinates data represent the Gaussian graphs for ANN training?
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Hi all, I am trying to train a network to produce the Sigma value and Delta value of the Gaussian & Dual-dirac delta. The inputs is the x-y coordinates of the Gaussian plots. every plot represent certain value of Sigma & delta.
Now due to the range of Sigma & delta, there're a lot of redundant x-y pairs and causing a lot of noise for the training data.
I am trying to just extract the enough "meaningful" N numbers of x-y coordinates per plot to feed to the ANN for training. and still need to maintain the same training data array dimensions for every plots.
For eg: To generate M numbers of plots for the training (i have this function ready), and N x-y pairs per plots The input training data array dimension will be NxM. the Target training data array dimension will be 2xM.
Example of the plots as follows: and the Input training Raw data of the X-Y coordinate are stacked as the attached spreadsheet which consists of many "near to Zeros" coordinates. </matlabcentral/answers/uploaded_files/126265/gauss.PNG>
My current problem are:
1. How to pre-process the training data or sample the meaningful plots with same N number of X-Y coordinates, for a M numbers of plots (may have few hundreds plots)? PS: I have the function to create the plots, the X-Y data is pre-generated to create the plots. I hope I have stated the question clearly. if not, please do ask me again.
Thank you very much.
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Accepted Answer
Bernhard Suhm
on 4 Aug 2018
Have you tried using multcompare on the stats object that aoctool delivers, like alluded to in the doc page for aoctool ?
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