Multiple correspondence analysis for handling large binary variables in smoothed location model
Smoothed location model is a discriminant analysis which can be used to handle the data involving mixtures of continuous and binary variables simultaneously.This model is introduced to handle the problem of some empty cells due to the increasing of binary variables.However, smoothed location model i...
Main Authors: | Ngu, Penny Ai Huong, Hamid, Hashibah, Aziz, Nazrina |
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Format: | Article |
Published: |
IP Publishing LLC
2015
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Subjects: |
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