Two‐Sample Test Against One‐Sided Alternatives |
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Authors: | TERESA LEDWINA GRZEGORZ WYŁUPEK |
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Affiliation: | Institute of Mathematics, Polish Academy of Sciences |
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Abstract: | Abstract. This paper proposes, implements and investigates a new non‐parametric two‐sample test for detecting stochastic dominance. We pose the question of detecting the stochastic dominance in a non‐standard way. This is motivated by existing evidence showing that standard formulations and pertaining procedures may lead to serious errors in inference. The procedure that we introduce matches testing and model selection. More precisely, we reparametrize the testing problem in terms of Fourier coefficients of well‐known comparison densities. Next, the estimated Fourier coefficients are used to form a kind of signed smooth rank statistic. In such a setting, the number of Fourier coefficients incorporated into the statistic is a smoothing parameter. We determine this parameter via some flexible selection rule. We establish the asymptotic properties of the new test under null and alternative hypotheses. The finite sample performance of the new solution is demonstrated through Monte Carlo studies and an application to a set of survival times. |
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Keywords: | data‐driven test life time data model selection non‐parametric hypothesis testing ordered alternatives score statistic smooth test stochastic dominance stochastic order unbiasedness |
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