Open Access
December, 1983 Nonparametric Inference for Rates with Censored Survival Data
Brian S. Yandell
Ann. Statist. 11(4): 1119-1135 (December, 1983). DOI: 10.1214/aos/1176346326

Abstract

This paper concerns nonparametric inference for hazard rates with censored serial data. The focus is upon "delta sequence" estimators of the form $h_n(x) = \int K_b(x, y) dH_n(y)$ with $K_b$ integrating to 1 and concentrating mass near $x$ as $b \rightarrow 0. H_n$ is the Nelson-Aalen empirical cumulative hazard. Strong approximation and simultaneous confidence bands are derived for Rosenblatt-Parzen estimators, with $K_b(x, y) = w((x - y)/b)/b, b = o(n^{-1}),$ and $w(\cdot)$ a well-behaved density. This work generalizes global deviation and mean square deviation results of Bickel and Rosenblatt and others to censored survival data. Simulations with exponential survival and censoring indicate the effect of censoring on bias, variance, and maximal absolute deviation. Data from a survival experiment with serial sacrifice are analysed.

Citation

Download Citation

Brian S. Yandell. "Nonparametric Inference for Rates with Censored Survival Data." Ann. Statist. 11 (4) 1119 - 1135, December, 1983. https://doi.org/10.1214/aos/1176346326

Information

Published: December, 1983
First available in Project Euclid: 12 April 2007

zbMATH: 0598.62050
MathSciNet: MR720258
Digital Object Identifier: 10.1214/aos/1176346326

Subjects:
Primary: 62G05
Secondary: 62G10 , 62G15 , 62P10

Keywords: Delta sequence , hazard rate , Kernel estimation , maximal deviation , simultaneous confidence band , survival rate

Rights: Copyright © 1983 Institute of Mathematical Statistics

Vol.11 • No. 4 • December, 1983
Back to Top