An omnibus two-sample test for ranked-set sampling data |
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Authors: | Jesse Frey Yimin Zhang |
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Affiliation: | Department of Mathematics and Statistics, Villanova University, Villanova, PA 19085, United States |
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Abstract: | We develop an omnibus two-sample test for ranked-set sampling (RSS) data. The test statistic is the conditional probability of seeing the observed sequence of ranks in the combined sample, given the observed sequences within the separate samples. We compare the test to existing tests under perfect rankings, finding that it can outperform existing tests in terms of power, particularly when the set size is large. The test does not maintain its level under imperfect rankings. However, one can create a permutation version of the test that is comparable in power to the basic test under perfect rankings and also maintains its level under imperfect rankings. Both tests extend naturally to judgment post-stratification, unbalanced RSS, and even RSS with multiple set sizes. Interestingly, the tests have no simple random sampling analog. |
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Keywords: | primary 62G10 secondary 62G30 Bohn–Wolfe Imperfect rankings Judgment post-stratification Kolmogorov–Smirnov Neyman allocation |
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