DISCRIMINANT FUNCTION ANALYSIS (DA)
Normal distribution: It is assumed that the data (for the variables) represent a sample from a multivariate normal distribution. You can examine whether or not ... discriminant function coefficients will not reliably assess the relative importance of the predictor variables.
Distribution, Functions, Discriminant, Discriminant function
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