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Statistics / Statistical theory / Hypothesis testing / Uniformly most powerful test / NeymanPearson lemma / Statistical hypothesis testing / Monotone likelihood ratio / Normal distribution
Date: 2013-04-14 17:23:19
Statistics
Statistical theory
Hypothesis testing
Uniformly most powerful test
NeymanPearson lemma
Statistical hypothesis testing
Monotone likelihood ratio
Normal distribution

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