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Statistics / Probability / Mathematical analysis / Probability distributions / Gibbs sampling / Markov chain Monte Carlo / Kalman filter / Regression analysis
Date: 2014-01-31 20:50:46
Statistics
Probability
Mathematical analysis
Probability distributions
Gibbs sampling
Markov chain Monte Carlo
Kalman filter
Regression analysis

A State-Space Model for National Football League Scores Mark E. GLICKMANand Hal S. STERN This articledevelopsa predictivemodel forNationalFootballLeague (NFL) game scoresusingdata fromtheperiodThe parameterso

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