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Statistics / Regression analysis / Estimation theory / Parametric statistics / Least squares / Linear regression / Ordinary least squares / Incremental validity / SAT / University of California / Variance / T-statistic
Date: 2012-11-01 12:46:13
Statistics
Regression analysis
Estimation theory
Parametric statistics
Least squares
Linear regression
Ordinary least squares
Incremental validity
SAT
University of California
Variance
T-statistic

Microsoft Word - satpaper.forjoe.finalrevision.doc

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