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Learning to bin: differentiable and Bayesian optimization for multi-dimensional discriminants in high-energy physics

Published: January 12, 2026 | arXiv ID: 2601.07756v1

By: Johannes Erdmann, Nitish Kumar Kasaraguppe, Florian Mausolf

Potential Business Impact:

Finds tiny signals hidden in big data.

Business Areas:
A/B Testing Data and Analytics

Categorizing events using discriminant observables is central to many high-energy physics analyses. Yet, bin boundaries are often chosen by hand. A simple, popular choice is to apply argmax projections of multi-class scores and equidistant binning of one-dimensional discriminants. We propose a binning optimization for signal significance directly in multi-dimensional discriminants. We use a Gaussian Mixture Model (GMM) to define flexible bin boundary shapes for multi-class scores, while in one dimension (binary classification) we move bin boundaries directly. On this binning model, we study two optimization strategies: a differentiable and a Bayesian optimization approach. We study two toy setups: a binary classification and a three-class problem with two signals and backgrounds. In the one-dimensional case, both approaches achieve similar gains in signal sensitivity compared to equidistant binnings for a given number of bins. In the multi-dimensional case, the GMM-based binning defines sensitive categories as well, with the differentiable approach performing best. We show that, in particular for limited separability of the signal processes, our approach outperforms argmax classification even with optimized binning in the one-dimensional projections. Both methods are released as lightweight Python plugins intended for straightforward integration into existing analyses.

Country of Origin
šŸ‡©šŸ‡Ŗ Germany

Repos / Data Links

Page Count
13 pages

Category
Physics:
Data Analysis, Statistics and Probability