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Here's a function to do it... of course you need to create an analyst private EncogAnalyst _analyst; public void NormalizeFile(FileInfo SourceDataFile, FileInfo NormalizedDataFile) { var wizard = new AnalystWizard(_analyst); wizard.Wizard(SourceDataFile, _useHeaders, AnalystFileFormat.DecpntComma); var norm = new AnalystNormalizeCSV(); ...


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Here's a nice function to do it... of course you need to create an analyst private EncogAnalyst _analyst; public void NormalizeFile(FileInfo SourceDataFile, FileInfo NormalizedDataFile) { var wizard = new AnalystWizard(_analyst); wizard.Wizard(SourceDataFile, _useHeaders, AnalystFileFormat.DecpntComma); var norm = new ...


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According to this link you can do this easily using Encog.Util.Arrayutil.NormalizeArray like so : I assume your data stored in double[] Encog.Util.Arrayutil.NormalizeArray normalizer = new Encog.Util.Arrayutil.NormalizeArray(); var normalizedData = normalizer.Process(dataMatrix, 0, 1);//(yourdata, low, high)


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One technique you could try would be to simply aggregate the output of several networks together after each epoch. In order to have different networks, you will have to initialize each network with different starting weights.


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Sounds like your data set is not separable. in this case an unbalanced set may result in bad performance. in libsvm you can assign a higher weight to labels with little representation. first i would suggest to keep all negatives as the feature space for the negatives is probably much bigger and will more likely be covered if all samples are kept. second you ...



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