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Ice hockey / Statistics / Regression analysis / Sports / Estimation theory / Actuarial science / Scientific method / Penalty / Coefficient of determination / Prediction
Date: 2016-08-05 16:43:37
Ice hockey
Statistics
Regression analysis
Sports
Estimation theory
Actuarial science
Scientific method
Penalty
Coefficient of determination
Prediction

NCAA Division I Committee on Infractions: Penalty Consistency Sport Industry Research Center TEMPLE UNIVERSITY

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Source URL: sthm.temple.edu

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