ESAIM: Proceedings and Surveys (Aug 2021)

Box-constrained optimization for minimax supervised learning***

  • Gilet Cyprien,
  • Barbosa Susana,
  • Fillatre Lionel

DOI
https://doi.org/10.1051/proc/202171109
Journal volume & issue
Vol. 71
pp. 101 – 113

Abstract

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In this paper, we present the optimization procedure for computing the discrete boxconstrained minimax classifier introduced in [1, 2]. Our approach processes discrete or beforehand discretized features. A box-constrained region defines some bounds for each class proportion independently. The box-constrained minimax classifier is obtained from the computation of the least favorable prior which maximizes the minimum empirical risk of error over the box-constrained region. After studying the discrete empirical Bayes risk over the probabilistic simplex, we consider a projected subgradient algorithm which computes the prior maximizing this concave multivariate piecewise affine function over a polyhedral domain. The convergence of our algorithm is established.