We propose a new approach to the problem of high-dimensional multivariate ANOVA via bootstrapping max statistics that involve the differences of sample mean vectors. The proposed method proceeds via the construction of simultaneous confidence regions for the differences of population mean vectors. It is suited to simultaneously test the equality of several pairs of mean vectors of potentially more than two populations. By exploiting the variance decay property that is a natural feature in relevant applications, we are able to provide dimension-free and nearly-parametric convergence rates for Gaussian approximation, bootstrap approximation, and the size of the test. We demonstrate the proposed approach with ANOVA problems for functional data and sparse count data. The proposed methodology is shown to work well in simulations and several real data applications.
翻译:我们建议采用新的方法,通过采用涉及样本平均矢量差异的最大统计数据,解决高维多变量的ANOVA问题。拟议方法通过针对人口平均矢量差异同时构建信任区进行。该方法适合于同时测试可能超过两个人口组数的若干对平均矢量的平等性。通过利用相关应用中自然特征的差异衰变特性,我们可以为高山近似、靴套近似和测试大小提供无维和近似参数的趋同率。我们展示了拟议方法,解决ANOVA功能数据和稀有计数数据的问题。拟议方法在模拟和若干实际数据应用方面效果良好。