Flow Annealed Importance Sampling Bootstrap meets Differentiable Particle Physics
November 25, 2024 Β· Declared Dead Β· π Machine Learning: Science and Technology
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Authors
Annalena Kofler, Vincent Stimper, Mikhail Mikhasenko, Michael Kagan, Lukas Heinrich
arXiv ID
2411.16234
Category
hep-ph
Cross-listed
cs.LG,
physics.comp-ph,
physics.data-an
Citations
3
Venue
Machine Learning: Science and Technology
Last Checked
3 months ago
Abstract
High-energy physics requires the generation of large numbers of simulated data samples from complex but analytically tractable distributions called matrix elements. Surrogate models, such as normalizing flows, are gaining popularity for this task due to their computational efficiency. We adopt an approach based on Flow Annealed importance sampling Bootstrap (FAB) that evaluates the differentiable target density during training and helps avoid the costly generation of training data in advance. We show that FAB reaches higher sampling efficiency with fewer target evaluations in high dimensions in comparison to other methods.
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