English

Inference on a Distribution Function from Ranked Set Samples

Methodology 2018-07-03 v5

Abstract

Consider independent observations (X1,R1)(X_1,R_1), (X2,R2)(X_2,R_2), \ldots, (Xn,Rn)(X_n,R_n) with random or fixed ranks Ri{1,2,,k}R_i \in \{1,2,\ldots,k\}, while conditional on Ri=rR_i = r, the random variable XiX_i has the same distribution as the rr-th order statistic within a random sample of size kk from an unknown continuous distribution function FF. Such observation schemes are utilized in situations in which ranking observations is much easier than obtaining their precise values. Two well-known special cases are ranked set sampling (McIntyre 1952) and judgement post-stratification (MacEachern et al. 2004). Within a general setting including unbalanced ranked set sampling we derive and compare the asymptotic distributions of three different estimators of the distribution function FF as nn \to \infty with fixed kk: The stratified estimator of Stokes and Sager (1988), the nonparametric maximum-likelihood estimator of Kvam and Samaniego (1994) and a moment-based estimator of Chen (2001). Our functional central limit theorems generalize and refine previous asymptotic analyses. In addition we discuss briefly pointwise and simultaneous confidence intervals for the distribution function FF with guaranteed coverage probability for finite sample sizes. The methods are illustrated with a real data example, and the potential impact of imperfect rankings is investigated in a small simulation experiment. All in all, the moment-based estimator seems to offer a good compromise between efficiency and robustness versus imperfect ranking, in addition to computational efficiency.

Keywords

Cite

@article{arxiv.1304.6950,
  title  = {Inference on a Distribution Function from Ranked Set Samples},
  author = {Lutz Duembgen and Ehsan Zamanzade},
  journal= {arXiv preprint arXiv:1304.6950},
  year   = {2018}
}
R2 v1 2026-06-22T00:06:26.452Z