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Empirical process / Probability theory / Glivenko–Cantelli theorem / Maximum likelihood / Statistics / Statistical theory / Non-parametric statistics
Date: 2009-06-25 19:10:10
Empirical process
Probability theory
Glivenko–Cantelli theorem
Maximum likelihood
Statistics
Statistical theory
Non-parametric statistics

A Z-theorem with Estimated Nuisance Parameters and Correction Note for ‘Weighted Likelihood for Semiparametric Models and Two-phase Stratified Samples, with Application to Cox Regression’

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