Fast Censored Linear Regression

Fast Censored Linear Regression

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Article ID: iaor201523667
Volume: 40
Issue: 4
Start Page Number: 789
End Page Number: 806
Publication Date: Dec 2013
Journal: Scandinavian Journal of Statistics
Authors:
Keywords: statistics: regression
Abstract:

Weighted log‐rank estimating function has become a standard estimation method for the censored linear regression model, or the accelerated failure time model. Well established statistically, the estimator defined as a consistent root has, however, rather poor computational properties because the estimating function is neither continuous nor, in general, monotone. We propose a computationally efficient estimator through an asymptotics‐guided Newton algorithm, in which censored quantile regression methods are tailored to yield an initial consistent estimate and a consistent derivative estimate of the limiting estimating function. We also develop fast interval estimation with a new proposal for sandwich variance estimation. The proposed estimator is asymptotically equivalent to the consistent root estimator and barely distinguishable in samples of practical size. However, computation time is typically reduced by two to three orders of magnitude for point estimation alone. Illustrations with clinical applications are provided.

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