JRSSB Mar 13, 2026

Statistical exploration of the Manifold Hypothesis

Authors
Nick Whiteley Annie Gray Patrick Rubin-Delanchy
Paper Information
  • Journal:
    Journal of the Royal Statistical Society Series B
  • DOI:
    10.1093/jrsssb/qkag055
  • Published:
    March 13, 2026
  • Added to Tracker:
    Mar 14, 2026
Abstract

Abstract The Manifold Hypothesis is a widely accepted tenet of Machine Learning which asserts that nominally high-dimensional data are in fact concentrated near a low-dimensional manifold, embedded in high-dimensional space. This phenomenon is observed empirically in many real world situations, has led to development of a wide range of statistical methods in the last few decades, and has been suggested as a key factor in the success of modern AI technologies. We show that rich and sometimes intricate manifold structure in data can emerge from a generic and remarkably simple statistical model — the Latent Metric Space model — via elementary concepts such as latent variables, correlation and stationarity. This establishes a general statistical explanation for why the Manifold Hypothesis seems to hold in so many situations. Informed by the Latent Metric Space model we derive procedures to discover and interpret the geometry of high-dimensional data, and explore hypotheses about the data generating mechanism. These procedures operate under minimal assumptions and make use of well-known dimension reduction methods and graph-analytic algorithms.

Author Details
Nick Whiteley
Author
Annie Gray
Author
Patrick Rubin-Delanchy
Author
Citation Information
APA Format
Nick Whiteley , Annie Gray & Patrick Rubin-Delanchy (2026) . Statistical exploration of the Manifold Hypothesis. Journal of the Royal Statistical Society Series B , 10.1093/jrsssb/qkag055.
BibTeX Format
@article{paper1034,
  title = { Statistical exploration of the Manifold Hypothesis },
  author = { Nick Whiteley and Annie Gray and Patrick Rubin-Delanchy },
  journal = { Journal of the Royal Statistical Society Series B },
  year = { 2026 },
  doi = { 10.1093/jrsssb/qkag055 },
  url = { https://doi.org/10.1093/jrsssb/qkag055 }
}