General class of function-indexed nonparametric tests for survival analysis
成果类型:
Article
署名作者:
Lin, CY; Kosorok, MR
署名单位:
University of Alabama System; University of Alabama Birmingham; University of Wisconsin System; University of Wisconsin Madison
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
发表日期:
1999
页码:
1722-1744
关键词:
efficiency-robust-tests
censored data
rank
statistics
tables
摘要:
Many of the popular nonparametric test: statistics for censored survival data used in two-sample, K-sample trend and continuous covariate situations are special cases of a general statistic, differing only in the choice of the covariate-based label and the weight function. A weight function determines the asymptotic efficiency of its corresponding statistic in this general class. Since the true alternatives are often unknown, we may not be able to foresee which weight function is the best for a particular data set We show in this paper that certain large families of these statistics form stochastic processes, doubly indexed by both the weight Function and the time scale, which converge weakly to Gaussian processes also indexed by both the weight function and the time scale. These asymptotic properties allow development of versatile test procedures which are simultaneously sensitive to a reasonably large collection of alternatives. Due to the complexity of the Gaussian processes, a Monte Carlo approach is proposed to obtain the distributional characteristics of these statistics under the null hypothesis.