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. 2010 Apr;20(2):871-910.

A GENERAL ASYMPTOTIC THEORY FOR MAXIMUM LIKELIHOOD ESTIMATION IN SEMIPARAMETRIC REGRESSION MODELS WITH CENSORED DATA

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A GENERAL ASYMPTOTIC THEORY FOR MAXIMUM LIKELIHOOD ESTIMATION IN SEMIPARAMETRIC REGRESSION MODELS WITH CENSORED DATA

Donglin Zeng et al. Stat Sin. 2010 Apr.

Abstract

We establish a general asymptotic theory for nonparametric maximum likelihood estimation in semiparametric regression models with right censored data. We identify a set of regularity conditions under which the nonparametric maximum likelihood estimators are consistent, asymptotically normal, and asymptotically efficient with a covariance matrix that can be consistently estimated by the inverse information matrix or the profile likelihood method. The general theory allows one to obtain the desired asymptotic properties of the nonparametric maximum likelihood estimators for any specific problem by verifying a set of conditions rather than by proving technical results from first principles. We demonstrate the usefulness of this powerful theory through a variety of examples.

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References

    1. Heitjan DF, Rubin DB. Ignorability and coarse data. Ann Statist. 1991;19:2244–2253.
    1. Murphy SA. Consistency in a proportional hazards model incorporating a random effect. Ann Statist. 1994;22:712–731.
    1. Murphy SA. Asymptotic theory for the frailty model. Ann Statist. 1995;23:182–198.
    1. Murphy SA, van der Vaart AW. On profile likelihood. J Am Statist Assoc. 2000;95:449–485.
    1. Murphy SA, van der Vaart AW. Semiparametric mixtures in case-control studies. J Multi Analy. 2001;79:1–32.

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