Data-driven most powerful tests are statistical hypothesis decision-making tools that deliver the greatest power against a fixed null hypothesis among all corresponding data-based tests of a given size. When the underlying data distributions are known, the likelihood ratio principle can be applied to conduct most powerful tests. Reversing this notion, we consider the following questions. (a) Assuming a test statistic, say T, is given, how can we transform T to improve the power of the test? (b) Can T be used to generate the most powerful test? (c) How does one compare test statistics with respect to an attribute of the desired most powerful decision-making procedure? To examine these questions, we propose one-to-one mapping of the term 'Most Powerful' to the distribution properties of a given test statistic via matching characterization. This form of characterization has practical applicability and aligns well with the general principle of sufficiency. Findings indicate that to improve a given test, we can employ relevant ancillary statistics that do not have changes in their distributions with respect to tested hypotheses. As an example, the present method is illustrated by modifying the usual t-test under nonparametric settings. Numerical studies based on generated data and a real-data set confirm that the proposed approach can be useful in practice.
翻译:由数据驱动的最强有力的测试是统计假设决策工具,它能提供最大力量,对抗所有相应数据基测试中某一特定尺寸的固定无效假设。当基本数据分布为已知时,我们建议对最有力的测试适用概率原则。修改这个概念,我们考虑以下问题。 (a) 假设有一个测试统计数据,比如T,我们如何转换T以提高测试的实力? (b) T能够用来产生最有力的测试? (c) 如何将测试统计数据与所希望的最强大决策程序的属性进行比较?为了审查这些问题,我们提议通过匹配特征,对“最强大”一词进行一对一的绘图,以显示特定测试统计的分布属性。这种定性形式具有实际适用性,并与一般的充分性原则相一致。调查结果表明,为了改进特定测试,我们可以使用在测试假设的分布方面没有变化的相关辅助统计数据。例如,通过修改非参数化数据生成的常规的测试方法,可以用来验证非参数设置中的拟议数据。</s>