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Optimal design / Partial least squares regression / Mixed model / General linear model / Resampling / Generalized linear model / Estimation of covariance matrices / Errors-in-variables models / Principal component analysis / Statistics / Regression analysis / Linear regression
Date: 2012-08-09 08:24:55
Optimal design
Partial least squares regression
Mixed model
General linear model
Resampling
Generalized linear model
Estimation of covariance matrices
Errors-in-variables models
Principal component analysis
Statistics
Regression analysis
Linear regression

LINSTAT – IWMS’2012 Będlewo, Poland, 16–20 July 2012, http://linstat2012.au.poznan.pl/ Sunday, :00 – 19:00 – Registration

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