Chapter 321 Logistic Regression - NCSS
Logistic regression competes with discriminant analysis as a method for analyzing categorical-response variables. Many statisticians feel that logistic regression is more versatile and better suited f or modelling most situations than is discriminant analysis. This is because logistic regression does not assume that the independent variables
Analysis, Logistics, Discriminant, Regression, Logistic regression, Discriminant analysis
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