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Robust statistics / Estimation theory / Statistical theory / Covariance and correlation / M-estimators / Outlier / Maximum likelihood estimation / Mixture model / Expectationmaximization algorithm / Sample mean and covariance / Efficiency / Normal distribution
Date: 2015-03-18 18:22:04
Robust statistics
Estimation theory
Statistical theory
Covariance and correlation
M-estimators
Outlier
Maximum likelihood estimation
Mixture model
Expectationmaximization algorithm
Sample mean and covariance
Efficiency
Normal distribution

This article has been accepted for publication in a future issue of this journal, but has not been fully edited. Content may change prior to final publication. Citation information: DOITKDE, IEEE Tr

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