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Expectation–maximization algorithm / Errors-in-variables models / Likelihood function / Sufficient statistic / M-estimator / Estimator / Normal distribution / Statistics / Estimation theory / Maximum likelihood
Date: 2014-04-14 12:48:46
Expectation–maximization algorithm
Errors-in-variables models
Likelihood function
Sufficient statistic
M-estimator
Estimator
Normal distribution
Statistics
Estimation theory
Maximum likelihood

A Unified Approach to Measurement Error and Missing Data: Details and Extensions∗ Matthew Blackwell† James Honaker‡

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