Stein’s Method in Stochastic Geometry, Statistical Learning, and Optimisation

  • Krishnakumar Balasubramanian

    University of California, Davis, USA
  • Murat A. Erdogdu

    University of Toronto, Canada
  • Larry Goldstein

    University of Southern California, Los Angeles, USA
  • Gesine Reinert

    University of Oxford, UK
Stein’s Method in Stochastic Geometry, Statistical Learning, and Optimisation cover
Download PDF

This article is published open access.

Abstract

Stein’s method, a powerful tool rooted in probability and stochastic analysis, has recently showcased its efficacy in addressing diverse challenges encountered in deep learning, optimisation, sampling, and causal inference. The primary focus of the workshop is to strengthen the probabilistic and analytic foundations of Stein’s method, while simultaneously exploring novel avenues for its application. Bringing together researchers from the analysis, probability, statistics, and machine learning communities, who share a common interest in Stein’s method, the workshop aims to facilitate idea exchange, tackle open problems, and foster collaborations to advance the forefront of knowledge in these fields. Of particular importance is the emphasis placed on the intersection of these disciplines, where Stein’s method plays a pivotal role.

Cite this article

Krishnakumar Balasubramanian, Murat A. Erdogdu, Larry Goldstein, Gesine Reinert, Stein’s Method in Stochastic Geometry, Statistical Learning, and Optimisation. Oberwolfach Rep. 22 (2025), no. 3, pp. 2125–2140

DOI 10.4171/OWR/2025/39