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Statistics / Statistical theory / Hypothesis testing / Statistical inference / Maximum likelihood estimation / Design of experiments / Estimation theory / Fisher information / Monotone likelihood ratio / Uniformly most powerful test / Consistent estimator / Likelihood function
Date: 2013-04-10 14:39:17
Statistics
Statistical theory
Hypothesis testing
Statistical inference
Maximum likelihood estimation
Design of experiments
Estimation theory
Fisher information
Monotone likelihood ratio
Uniformly most powerful test
Consistent estimator
Likelihood function

Recap ... Karlin-Rabin ......

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