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Multivariate statistics / Analysis of variance / Biplot / Random effects model / Akaike information criterion / Principal component analysis / Generalized linear model / Economic model / Logistic regression / Statistics / Regression analysis / Statistical models
Date: 2013-09-10 16:20:37
Multivariate statistics
Analysis of variance
Biplot
Random effects model
Akaike information criterion
Principal component analysis
Generalized linear model
Economic model
Logistic regression
Statistics
Regression analysis
Statistical models

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