PoS - Proceedings of Science
Volume 434 - International Symposium on Grids & Clouds (ISGC) 2023 in conjunction with HEPiX Spring 2023 Workshop (ISGC&HEPiX2023) - Physics and Engineering Applications
Joint Variational Auto-Encoder for Anomaly Detection in High Energy Physics
L. Valente*, L. Anzalone, M. Lorusso and D. Bonacorsi
Full text: pdf
Supplementary files:
Published on: October 25, 2023
Abstract
Despite providing invaluable data in the field of High Energy Physics, the LHC may encounter challenges in obtaining interesting results through conventional methods applied in previous run periods.
Our proposed approach involves a Joint Variational Autoencoder (JointVAE) model, trained on known physics processes to identify anomalous events corresponding to previously unidentified physics signatures.
By doing so, this method does not rely on any specific new physics signatures, and it can detect anomaly events in an unsupervised manner, complementing the traditional LHC search tactics relying on model-dependent hypothesis testing.
This paper also presents a study on the implementation feasibility of the JointVAE model for real-time anomaly detection in general-purpose experiments at CERN LHC.
Low latency and reduced resource consumption are among the challenges faced when implementing machine learning models in fast applications, such as the trigger system of the LHC experiments.
Therefore, the JointVAE model has been studied for its implementation feasibility in Field-Programmable Gate Arrays (FPGAs), utilizing a tool based on High-Level Synthesis named HLS4ML.
The code that supports this work is publicly available at https://github.com/LorenzoValente3/JointVAE4AD.
DOI: https://doi.org/10.22323/1.434.0014
How to cite

Metadata are provided both in "article" format (very similar to INSPIRE) as this helps creating very compact bibliographies which can be beneficial to authors and readers, and in "proceeding" format which is more detailed and complete.

Open Access
Creative Commons LicenseCopyright owned by the author(s) under the term of the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.