Detecting non-uniform patterns on high-dimensional hyperspheres (2506.00444v1)
Abstract: We propose a new probabilistic characterization of the uniform distribution on hyperspheres in terms of its inner product, extending the ideas of \cite{cuesta2009projection,cuesta2007sharp} in a data-driven manner. Using this characterization, we define a new distance that quantifies the deviation of an arbitrary distribution from uniformity. As an application, we construct a novel nonparametric test for the uniformity testing problem: determining whether a set of (n) i.i.d. random points on the (p)-dimensional hypersphere is approximately uniformly distributed. The proposed test is based on a degenerate U-process and is universally consistent in fixed-dimensional settings. Furthermore, in high-dimensional settings, it stands apart from existing tests with its simple implementation and asymptotic theory, while also possessing a model-free consistency property. Specifically, it can detect any alternative outside a ball of radius (n{-1/2}) with respect to the proposed distance.
Collections
Sign up for free to add this paper to one or more collections.
Paper Prompts
Sign up for free to create and run prompts on this paper using GPT-5.