an efficient estimation of the mean residual life function with length-biased right-censored data

an efficient estimation of the mean residual life function with length-biased right-censored data

;Hongping Wu;Yihui Luan
journal of power sources 2014 Vol. 2014 pp. -
80
wu2014mathematicalan

Abstract

The mean residual life (MRL) function for a lifetime random variable T0 is one of the basic parameters of interest in survival analysis. In this paper, we propose a new estimator of the MRL function with length-biased right-censored data and evaluate its performance through a small Monte Carlo simulation study. The results of the simulations show that the proposed estimator outperforms the existing one referred to in Data and Model Setup Section in terms of Monte Carlo bias and mean square error, especially when the censoring rate is heavy. We also show that the proposed estimator converges in distribution under some conditions.

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178060
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10.1155/2014/937397
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