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Statistics / Statistical theory / Estimation theory / Statistical inference / Robust statistics / Nonparametric statistics / Bias of an estimator / Estimator / Median / Optimal design / L-estimator / Sampling
Statistics
Statistical theory
Estimation theory
Statistical inference
Robust statistics
Nonparametric statistics
Bias of an estimator
Estimator
Median
Optimal design
L-estimator
Sampling

An International Journal of the Polish Statistical Association

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