A Tutorial on Multivariate Statistical Analysis
MULTIVARIATE GENERALIZATIONS From the classic textbook of Anderson[1]: Multivariate statistical analysis is concerned with data that consists of sets of measurements on a number of individuals or objects. The sample data may be heights and weights of some individuals drawn randomly from a population of
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