Some simple nonparametric methods to test for perfect ranking in ranked set sampling |
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Authors: | T. Li N. Balakrishnan |
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Affiliation: | 1. Department of Mathematics, Statistics and Computer Science, St. Francis Xavier University, P.O. Box 5000, Antigonish, NS, Canada B2G 2W5;2. Department of Mathematics and Statistics, McMaster University, 1280 Main Street West, Ont., Canada L8S 4K1 |
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Abstract: | A lot of research on ranked set sampling (RSS) is based on the assumption that the ranking is perfect. Hence, it is necessary to develop some tests that could be used to validate this assumption of perfect ranking. In this paper, we introduce some simple nonparametric methods for this purpose. We specifically define three test statistics, Nk,Sk and Ak, based on one-cycle RSS, which are all associated with the ordered ranked set sample (ORSS). We then derive the exact null distributions and exact power functions of all these tests. Next, by using the sum or the maximum of each statistic over all cycles, we propose six test statistics for the case of multi-cycle RSS. We compare the performance of all these tests with that of the Kolmogorov–Smirnov test statistic proposed earlier by Stokes and Sager [1988. Characterization of a ranked-set sample with application to estimating distribution functions. J. Amer. Statist. Assoc. 83, 35–42] and display that all proposed test statistics are more powerful. Finally, we present an example to illustrate the test procedures discussed here. |
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Keywords: | Ranked set sampling Ordered ranked set sampling Perfect ranking Nonparametric tests Power |
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