An unfolding method based on conditional invertible neural networks (cINN) using iterative training

The unfolding of detector effects is crucial for the comparison of data to theory predictions. While traditional methods are limited to representing the data in a low number of dimensions, machine learning has enabled new unfolding techniques while retaining the full dimensionality. Generative netwo...

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Bibliographic Details
Main Author: Mathias Backes, Anja Butter, Monica Dunford, Bogdan Malaescu
Format: Article
Language:English
Published: SciPost 2024-02-01
Series:SciPost Physics Core
Online Access:https://scipost.org/SciPostPhysCore.7.1.007
Description
Summary:The unfolding of detector effects is crucial for the comparison of data to theory predictions. While traditional methods are limited to representing the data in a low number of dimensions, machine learning has enabled new unfolding techniques while retaining the full dimensionality. Generative networks like invertible neural networks~(INN) enable a probabilistic unfolding, which map individual data events to their corresponding unfolded probability distribution. The accuracy of such methods is however limited by how well simulated training samples model the actual data that is unfolded. We introduce the iterative conditional INN (IcINN) for unfolding that adjusts for deviations between simulated training samples and data. The IcINN unfolding is first validated on toy data and then applied to pseudo-data for the $pp \to Z \gamma \gamma$ process.
ISSN:2666-9366