To understand how the choice of a norm affects power properties of tests in high dimensions, we study the consistency sets of $p$-norm based tests in the prototypical framework of sequence models with unrestricted parameter spaces, the null hypothesis being that all observations have zero mean. The consistency set of a test is here defined as the set of all arrays of alternatives the test is consistent against as the dimension of the parameter space diverges. We characterize the consistency sets of $p$-norm based tests and find, in particular, that the consistency against an array of alternatives cannot be determined solely in terms of the $p$-norm of the alternative. Our characterization also reveals an unexpected monotonicity result: namely that the consistency set is strictly increasing in $p \in (0, \infty)$, such that tests based on higher $p$ strictly dominate those based on lower $p$ in terms of consistency. This monotonicity allows us to construct novel tests that dominate, with respect to their consistency behavior, all $p$-norm based tests without sacrificing size.
翻译:为了了解标准的选择如何影响高维度测试的功率特性,我们研究了在无限制参数空间的序列模型原型框架内基于美元-诺尔姆的测试的一致性套数,其假设是所有观测均为零。一个测试的一致性套数在这里被定义为所有选择阵列的整套选择都与参数空间的维度一致。我们将基于美元-诺尔姆的测试的一致套数定性为$-诺尔姆的测试,并特别发现,与一系列替代测试的一致性不能仅以该替代品的美元-诺尔姆为基值来确定。我们的定性还揭示出出出一个出乎意料的单一性结果:即一致性套数严格地以美元=0,\ infty)美元增加,这种基于更高的美元测试严格控制以较低的参数空间的维度。这种单一性使我们能够构建新测试,在一致性行为上,所有基于美元-诺尔姆的测试都以美元-诺尔姆为主,而不牺牲其大小。