We consider the semiparametric linear regression model with censored data and with unknown error distribution. We describe estimation equations of the Buckley-James type that admit 4n -consistent and asymptotically normal solutions. The derived estimator is efficient at a particular error distribution. We show the equivalence between this type of estimator and an estimator based on a linear rank test suggested by Tsiatis. This equivalence is an extension of a basic equivalence between Doob type martingales and counting process martingales shown by Ritov and Wellner. An extension to an estimator that is efficient everywhere is discussed.
CITATION STYLE
Ritov, Y. (2007). Estimation in a Linear Regression Model with Censored Data. The Annals of Statistics, 18(1). https://doi.org/10.1214/aos/1176347502
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