In this paper, we have studied the nonparameter
accelerated failure time (AFT) additive regression model, whose covariates have
a nonparametric effect on high-dimensional censored data. We give the
asymptotic property of the penalty estimator based on GMCP in the nonparameter
AFT model.
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