Autoencoders are an effective analysis tool for the LHC, as they represent one of its main goal of finding physics beyond the Standard Model. The key challenge is that out-of-distribution anomaly searches based on the compressibility of features do not apply to the LHC, while existing density-based searches lack performance. We present the first autoencoder which identifies anomalous jets symmetrically in the directions of higher and lower complexity. The normalized autoencoder combines a standard bottleneck architecture with a well-defined probabilistic description. It works better than all available autoencoders for top vs QCD jets and reliably identifies different dark-jet signals.
@article{arxiv.2206.14225,
title = {A Normalized Autoencoder for LHC Triggers},
author = {Barry M. Dillon and Luigi Favaro and Tilman Plehn and Peter Sorrenson and Michael Krämer},
journal= {arXiv preprint arXiv:2206.14225},
year = {2023}
}
Comments
26 pages, 11 figures; update based on referees report