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Quasiprobabilistic Density Ratio Estimation with a Reverse Engineered Classification Loss Function

Machine Learning 2025-12-24 v1 Machine Learning High Energy Physics - Experiment

Abstract

We consider a generalization of the classifier-based density-ratio estimation task to a quasiprobabilistic setting where probability densities can be negative. The problem with most loss functions used for this task is that they implicitly define a relationship between the optimal classifier and the target quasiprobabilistic density ratio which is discontinuous or not surjective. We address these problems by introducing a convex loss function that is well-suited for both probabilistic and quasiprobabilistic density ratio estimation. To quantify performance, an extended version of the Sliced-Wasserstein distance is introduced which is compatible with quasiprobability distributions. We demonstrate our approach on a real-world example from particle physics, of di-Higgs production in association with jets via gluon-gluon fusion, and achieve state-of-the-art results.

Keywords

Cite

@article{arxiv.2512.19913,
  title  = {Quasiprobabilistic Density Ratio Estimation with a Reverse Engineered Classification Loss Function},
  author = {Matthew Drnevich and Stephen Jiggins and Kyle Cranmer},
  journal= {arXiv preprint arXiv:2512.19913},
  year   = {2025}
}

Comments

25 pages, 7 figures