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Statistics / Statistical theory / Estimation theory / Probability distributions / Statistical inference / Bayesian statistics / Maximum likelihood estimation / Confidence interval / Likelihood function / Exponential family / Normal distribution
Date: 2003-11-03 16:14:18
Statistics
Statistical theory
Estimation theory
Probability distributions
Statistical inference
Bayesian statistics
Maximum likelihood estimation
Confidence interval
Likelihood function
Exponential family
Normal distribution

Statistica Sinica), ASYMPTOTICS FOR A 2 × 2 TABLE WITH FIXED MARGINS S. G. Kou and Z. Ying Rutgers University

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Source URL: www.rmi.nus.edu.sg

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