標題: Estimation of Kendall's tau under censoring
作者: Wang, WJ
Wells, MT
統計學研究所
Institute of Statistics
關鍵字: bivariate censored data;bivariate survival function estimation;bootstrap;rank correlation;V-statistic;von Mises functional
公開日期: 1-Oct-2000
摘要: We study nonparametric estimation of Kendall's tau, tau, for bivariate censored data. Previous estimators of tau, proposed by Brown, Hollander and Korwar (1974), Weier and Basu (1980) and Oakes (1982), fail to be consistent when marginals are dependent. Here we express tau as an integral functional of the bivariate survival function and construct a natural estimator via the von Mises functional approach. This does not necessarily yield a consistent estimator since tail region information on the survival curve may not be identifiable due to right censoring. To assess the magnitude of the inconsistency we propose some estimable bounds on tau. It is shown that estimates of the bounds shrink to provide consistency if the largest observations on both marginal coordinates are uncensored and satisfy certain regularity conditions. The bounds depend on the sample size, on censoring rates and, in particular, on the estimated probability of the unknown tail region. We also discuss using the bootstrap method for variance estimation and bias correction. Two illustrative data examples are analyzed, as well as some simulation results.
URI: http://hdl.handle.net/11536/30230
ISSN: 1017-0405
期刊: STATISTICA SINICA
Volume: 10
Issue: 4
起始頁: 1199
結束頁: 1215
Appears in Collections:Articles