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Maximum likelihood / Parametric model / Conjugate prior / Exponential family / Sufficient statistic / Likelihood function / Entailment / Fisher information / Completeness / Statistics / Statistical theory / Estimation theory
Date: 2015-01-13 23:03:57
Maximum likelihood
Parametric model
Conjugate prior
Exponential family
Sufficient statistic
Likelihood function
Entailment
Fisher information
Completeness
Statistics
Statistical theory
Estimation theory

STAT 538 Lecture 3 Exponential Family Models c Marina Meil˘a [removed]

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