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Estimation theory / Econometrics / Statistical inference / M-estimators / Loss function / Maximum likelihood estimation / Confidence interval
Date: 2015-06-16 05:01:10
Estimation theory
Econometrics
Statistical inference
M-estimators
Loss function
Maximum likelihood estimation
Confidence interval

Minimizing Expected Losses in Perturbation Models with Multidimensional Parametric Min-cuts Adrian Kim, Kyomin Jung Seoul National University Seoul, South Korea

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