Given a fixed-sample-size test that controls the error probabilities under two specific, but arbitrary, distributions, a 3-stage and two 4-stage tests are proposed and analyzed. For each of them, a novel, concrete, non-asymptotic, non-conservative design is specified, which guarantees the same error control as the given fixed-sample-size test. Moreover, first-order asymptotic approximation are established on their expected sample sizes under the two prescribed distributions as the error probabilities go to zero. As a corollary, it is shown that the proposed multistage tests can achieve, in this asymptotic sense, the optimal expected sample size under these two distributions in the class of all sequential tests with the same error control. Furthermore, they are shown to be much more robust than Wald's SPRT when applied to one-sided testing problems and the error probabilities under control are small enough. These general results are applied to testing problems in the iid setup and beyond, such as testing the correlation coefficient of a first-order autoregression, or the transition matrix of a finite-state Markov chain, and are illustrated in various numerical studies.
翻译:根据固定抽样大小的测试,在两种特定但任意的分布、三阶段和两个四阶段的测试下控制误差概率,建议并分析其中两种特定但任意的分布、三阶段和两个四阶段的测试。每种测试都指定了新型的、混凝土的、非抽吸的、非保守的设计,保证了与给定固定抽样大小的测试相同的误差控制。此外,在两种规定的分布下,其预期的样本大小上建立了一阶的无症状近似,如误差概率为零。作为必然结果,显示拟议的多阶段测试可以达到所有顺序测试类别中的这两种分布下的最佳预期样本规模,且具有相同的误差控制。此外,在对单面测试问题应用时,这些误差近似性比Wald的SPRT强得多,而且所控制的误差概率也足够小。这些一般结果适用于对误差设置内外的问题的测试,例如测试一级自动自闭式自动剖的相联系数,在一系列研究中测试,示式的矩阵和定式矩阵转换。