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Particle Graph Autoencoders and Differentiable, Learned Energy Mover's Distance (2111.12849v1)
Published 24 Nov 2021 in physics.data-an, cs.LG, and hep-ex
Abstract: Autoencoders have useful applications in high energy physics in anomaly detection, particularly for jets - collimated showers of particles produced in collisions such as those at the CERN Large Hadron Collider. We explore the use of graph-based autoencoders, which operate on jets in their "particle cloud" representations and can leverage the interdependencies among the particles within a jet, for such tasks. Additionally, we develop a differentiable approximation to the energy mover's distance via a graph neural network, which may subsequently be used as a reconstruction loss function for autoencoders.
- Steven Tsan (4 papers)
- Raghav Kansal (19 papers)
- Anthony Aportela (2 papers)
- Daniel Diaz (19 papers)
- Javier Duarte (67 papers)
- Sukanya Krishna (2 papers)
- Farouk Mokhtar (13 papers)
- Jean-Roch Vlimant (47 papers)
- Maurizio Pierini (85 papers)