I'm using a csv file as the input to the neural network. I have 26 classes. During the normalization process of the csv file I followed NormalizeFile example of encog by using
EncogAnalyst analyst = new EncogAnalyst(); AnalystWizard wizard = new AnalystWizard(analyst); wizard.wizard(sourceFile, true, AnalystFileFormat.DECPNT_COMMA); final AnalystNormalizeCSV norm = new AnalystNormalizeCSV(); norm.analyze(sourceFile, true, CSVFormat.ENGLISH, analyst); norm.setProduceOutputHeaders(true); norm.normalize(targetFile); Encog.getInstance().shutdown();
In detection phase, After I get the recognition result from the neural network, how should I get which class it is closest to? Should I use decode() method in Equilateral class? In the encog3 java book, it says we usually don't need to deal with Equilateral class directly. What's the best practice here?