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Versatile Energy-Based Probabilistic Models for High Energy Physics

About

As a classical generative modeling approach, energy-based models have the natural advantage of flexibility in the form of the energy function. Recently, energy-based models have achieved great success in modeling high-dimensional data in computer vision and natural language processing. In line with these advancements, we build a multi-purpose energy-based probabilistic model for High Energy Physics events at the Large Hadron Collider. This framework builds on a powerful generative model and describes higher-order inter-particle interactions. It suits different encoding architectures and builds on implicit generation. As for applicative aspects, it can serve as a powerful parameterized event generator for physics simulation, a generic anomalous signal detector free from spurious correlations, and an augmented event classifier for particle identification.

Taoli Cheng, Aaron Courville• 2023

Related benchmarks

TaskDatasetResultRank
Anomaly DetectionQCD vs Standard Model Top jets (test)
AUC94
8
Anomaly DetectionQCD vs Hypothesized Higgs bosons OOD H (test)
AUC0.877
8
3-way classificationQCD/W/Top
Top-1 Accuracy85
4
Generative ModelingQCD jets--
1
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