English

Flows for Flows: Morphing one Dataset into another with Maximum Likelihood Estimation

High Energy Physics - Phenomenology 2023-11-22 v1 Machine Learning High Energy Physics - Experiment Data Analysis, Statistics and Probability

Abstract

Many components of data analysis in high energy physics and beyond require morphing one dataset into another. This is commonly solved via reweighting, but there are many advantages of preserving weights and shifting the data points instead. Normalizing flows are machine learning models with impressive precision on a variety of particle physics tasks. Naively, normalizing flows cannot be used for morphing because they require knowledge of the probability density of the starting dataset. In most cases in particle physics, we can generate more examples, but we do not know densities explicitly. We propose a protocol called flows for flows for training normalizing flows to morph one dataset into another even if the underlying probability density of neither dataset is known explicitly. This enables a morphing strategy trained with maximum likelihood estimation, a setup that has been shown to be highly effective in related tasks. We study variations on this protocol to explore how far the data points are moved to statistically match the two datasets. Furthermore, we show how to condition the learned flows on particular features in order to create a morphing function for every value of the conditioning feature. For illustration, we demonstrate flows for flows for toy examples as well as a collider physics example involving dijet events

Keywords

Cite

@article{arxiv.2309.06472,
  title  = {Flows for Flows: Morphing one Dataset into another with Maximum Likelihood Estimation},
  author = {Tobias Golling and Samuel Klein and Radha Mastandrea and Benjamin Nachman and John Andrew Raine},
  journal= {arXiv preprint arXiv:2309.06472},
  year   = {2023}
}

Comments

15 pages, 17 figures. This work is a merger of arXiv:2211.02487 and arXiv:2212.06155

R2 v1 2026-06-28T12:19:35.989Z