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Hypotheses Tests Using Non-asymptotic Fuzzy Estimators and Fuzzy Critical Values

机译:使用非渐近模糊估计器和模糊临界值进行假设检验

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In fuzzy hypothesis testing we use fuzzy test statistics produced by fuzzy estimators and fuzzy critical values. In this paper we use the non-asymptotic fuzzy estimators in fuzzy hypothesis testing. These are triangular shaped fuzzy numbers that generalize the fuzzy estimators based on confidence intervals in such a way that eliminates discontinuities and ensures compact support. Our approach is particularly useful in critical situations, where subtle fuzzy comparisons between almost equal statistical quantities have to be made. In such cases the hypotheses tests that use non-asymptotic fuzzy estimators give better results than the previous approaches, since they give us the possibility of partial rejection or not of H_0.
机译:在模糊假设检测中,我们使用模糊估算器产生的模糊测试统计数据和模糊临界值。在本文中,我们在模糊假设检测中使用非渐近模糊估计。这些是三角形模糊数字,其基于这样的置信区间概括了模糊估计,这使得消除了不连续性并确保了紧凑的支撑。我们的方法在危急情况下特别有用,其中必须进行微妙的模糊比较几乎平等的统计量。在这种情况下,使用非渐近模糊估计器的假设测试比以前的方法提供更好的结果,因为它们给我们部分拒绝或不具有H_0的可能性。

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