English

Superquantiles at Work: Machine Learning Applications and Efficient Subgradient Computation

Optimization and Control 2022-01-04 v1

Abstract

R. Tyrell Rockafellar and collaborators introduced, in a series of works, new regression modeling methods based on the notion of superquantile (or conditional value-at-risk). These methods have been influential in economics, finance, management science, and operations research in general. Recently, they have been the subject of a renewed interest in machine learning, to address issues of distributional robustness and fair allocation. In this paper, we review some of these new applications of the superquantile, with references to recent developments. These applications involve nonsmooth superquantile-based objective functions that admit explicit subgradient calculations. To make these superquantile-based functions amenable to the gradient-based algorithms popular in machine learning, we show how to smooth them by infimal convolution and describe numerical procedures to compute the gradients of the smooth approximations. We put the approach into perspective by comparing it to other smoothing techniques and by illustrating it on toy examples.

Keywords

Cite

@article{arxiv.2201.00508,
  title  = {Superquantiles at Work: Machine Learning Applications and Efficient Subgradient Computation},
  author = {Yassine Laguel and Krishna Pillutla and Jérôme Malick and Zaid Harchaoui},
  journal= {arXiv preprint arXiv:2201.00508},
  year   = {2022}
}
R2 v1 2026-06-24T08:38:19.191Z