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Design of experiments / Observational study / Business intelligence / Matching / Confounding / SAS / Logistic regression / Dummy variable / Stepwise regression / Statistics / Econometrics / Regression analysis
Date: 2004-04-15 08:55:44
Design of experiments
Observational study
Business intelligence
Matching
Confounding
SAS
Logistic regression
Dummy variable
Stepwise regression
Statistics
Econometrics
Regression analysis

SUGI 29 Statistics and Data Analysis Paper[removed]

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