函数型数据方差分析的分析性置换检验

Analytic Permutation Testing for Functional Data ANOVA

Journal of Computational and Graphical Statistics · 2022
被引 7
ABS 3

中文导读

提出一种无需计算置换的分析性置换检验方法,利用浓度不等式和新型不完全贝塔变换,适用于多组函数型数据比较,显著降低计算成本。

Abstract

Analysis of variance is a cornerstone of statistical hypothesis testing. When data lies beyond the assumption of univariate normality, nonparametric methods including rank based statistics and permutation tests are enlisted. The permutation test is a versatile exact nonparametric significance test that requires drastically fewer assumptions than similar parametric tests. The main downfall of the permutation test is high computational cost making this approach laborious for comparing multiple samples of complex data types and completely infeasible in any application requiring speedy results such as high throughput streaming data. We rectify this problem through application of concentration inequalities and thus propose a computation free permutation test—that is, a permutation-less permutation test. This general framework is applied to multivariate and matrix-valued, but with a special emphasis on functional data. We improve these concentration bounds via a novel incomplete beta transform. Our theory is extended from two-sample to k-sample testing through the use of weakly dependent Rademacher chaoses and modified decoupling inequalities. Our methodology is tested on classic functional datasets including the Berkeley growth curves and the phoneme dataset. We further analyze a novel dataset of 12 spoken vowel sounds that was collected to illustrate to power of the analytic permutation test. Supplementary materials for this article are available online.

函数型数据分析非参数统计置换检验方差分析