We study inference about the uniform distribution with the proposed binary expansion approximation of uniformity (BEAUTY) approach. Through an extension of the celebrated Euler's formula, we approximate the characteristic function of any copula distribution with a linear combination of means of binary interactions from marginal binary expansions. This novel characterization enables a unification of many important existing tests through an approximation from some quadratic form of symmetry statistics, where the deterministic weight matrix characterizes the power properties of each test. To achieve a uniformly high power, we study test statistics with data-adaptive weights through an oracle approach, referred to as the binary expansion adaptive symmetry test (BEAST). By utilizing the properties of the binary expansion filtration, we show that the Neyman-Pearson test of uniformity can be approximated by an oracle weighted sum of symmetry statistics. The BEAST with this oracle leads all existing tests we considered in empirical power against all complex forms of alternatives. This oracle therefore sheds light on the potential of substantial improvements in power and on the form of optimal weights under each alternative. By approximating this oracle with data-adaptive weights, we develop the BEAST that improves the empirical power of many existing tests against a wide spectrum of common alternatives while providing clear interpretation of the form of non-uniformity upon rejection. We illustrate the BEAST with a study of the relationship between the location and brightness of stars.
翻译:我们研究关于统一分布的推论,建议采用统一(BEAUTY)的二进制扩张近似法(BEAUTY)方法。我们通过推广著名的尤拉公式,将任何合生分布的特性与边际二进制扩张的双进制互动手段的线性结合相近。这种新颖特征使得许多重要的现有试验能够通过某种对称统计的四进制形式的近似法将许多现有试验统一起来,其中确定性重量矩阵是每个测试的功率特性的特征。为了实现统一的高功率,我们通过一种甲骨文方法,即所谓的二进制扩张适应性对称测试(BEART)方法,将任何合生体分布的特性与从边际扩张的双进性互动手段的线性结合。我们通过利用双进制扩张过滤法的恒星特性,表明尼曼-皮尔森的统一性测试可以与某种对正态统计的加权总和对称性统计的比重相近。用这种分法引导我们对所有复杂替代方法的经验性能力进行的所有现有试验。因此,这或甲骨架展示了权力和最优度的变异变力和最优程度,我们目前对各种变异变异变的模型进行不同的研究。