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Two-sample nonparametric stochastic order inference with an application in plant physiology
Authors:Yishi Wang  Ann E Stapleton  Cuixian Chen
Institution:1. Department of Mathematics and Statistics, University of North Carolina Wilmington, Wilmington, NC, USA;2. Department of Biology and Marine Biology, University of North Carolina Wilmington, Wilmington, NC, USA
Abstract:In this paper, a new nonparametric methodology is developed for testing whether the changing pattern of a response variable over multiple ordered sub-populations from one treatment group differs with the one from another treatment group. The question is formalized into a nonparametric two-sample comparison problem for the stochastic order among subsamples, through U-statistics with accommodations for zero-inflated distributions. A novel bootstrap procedure is proposed to obtain the critical values with given type I error. Following the procedure, bootstrapped p-values are obtained through simulated samples. It is proven that the distribution of the test statistics is independent from the underlying distributions of the subsamples, when certain sufficient statistics provided. Furthermore, this study also develops a feasible framework for power studies to determine sample sizes, which is necessary in real-world applications. Simulation results suggest that the test is consistent. The methodology is illustrated using a biological experiment with a split-plot design, and significant differences in changing patterns of seed weight between treatments are found with relative small subsample sizes.
Keywords:Two-sample stochastic order  zero-inflated value  U-statistics
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