Testing independence of bivariate censored data using random walk on restricted permutation graph

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초록

In this paper, we propose a procedure to test the independence of bivariate censored data, which is generic and applicable to any censoring types in the literature. To test the hypothesis, we consider a rank-based statistic, Kendall's tau statistic. The censored data defines a restricted permutation space of all possible ranks of the observations. We propose the statistic, the average of Kendall's tau over the ranks in the restricted permutation space. To evaluate the statistic and its reference distribution, we develop a Markov chain Monte Carlo (MCMC) procedure to obtain uniform samples on the restricted permutation space and numerically approximate the null distribution of the averaged Kendall's tau. We numerically compare the power of our procedure to existing state of the art procedures in the literature under various censoring types. We apply the procedure to three real data examples with different censoring types, and compare the results with those by existing methods.

키워드

Bivariate incomplete dataKendall's tauMarkov chain Monte CarloRandom graphRestricted permutation spaceTesting independenceKENDALLS TAUASSOCIATIONCONCORDANCEFAILUREMODEL
제목
Testing independence of bivariate censored data using random walk on restricted permutation graph
저자
Cho, SeonghunYu, DonghyeonLim, Johan
DOI
10.1007/s42952-023-00206-7
발행일
2023-06
유형
Article
저널명
Journal of the Korean Statistical Society
52
2
페이지
395 ~ 419