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How to understand limitations of generative networks

Ranit Das, Luigi Favaro, Theo Heimel, Claudius Krause, Tilman Plehn, David Shih

2024SciPost Physics40 citationsDOIOpen Access PDF

Abstract

Well-trained classifiers and their complete weight distributions provide us with a well-motivated and practicable method to test generative networks in particle physics. We illustrate their benefits for distribution-shifted jets, calorimeter showers, and reconstruction-level events. In all cases, the classifier weights make for a powerful test of the generative network, identify potential problems in the density estimation, relate them to the underlying physics, and tie in with a comprehensive precision and uncertainty treatment for generative networks.

Topics & Concepts

Generative grammarClassifier (UML)Generative modelArtificial intelligenceMachine learningComputer scienceParticle physics theoretical and experimental studiesComputational Physics and Python ApplicationsDark Matter and Cosmic Phenomena
How to understand limitations of generative networks | Litcius