Searching for New Physics with Deep Autoencoders
Marco Farina, Yuichiro Nakai, David Shih

TL;DR
This paper proposes using deep autoencoders for unsupervised anomaly detection at the LHC, enabling the discovery of new physics signals directly from data without prior models.
Contribution
It introduces a novel method employing autoencoders to identify anomalous events in collider data, improving signal detection without labeled training data.
Findings
Autoencoders effectively distinguish signal from background in jet data.
Training on background data alone enhances signal detection.
Method can potentially discover new physics like RPV gluinos.
Abstract
We introduce a potentially powerful new method of searching for new physics at the LHC, using autoencoders and unsupervised deep learning. The key idea of the autoencoder is that it learns to map "normal" events back to themselves, but fails to reconstruct "anomalous" events that it has never encountered before. The reconstruction error can then be used as an anomaly threshold. We demonstrate the effectiveness of this idea using QCD jets as background and boosted top jets and RPV gluino jets as signal. We show that a deep autoencoder can significantly improve signal over background when trained on backgrounds only, or even directly on data which contains a small admixture of signal. Finally we examine the correlation of the autoencoders with jet mass and show how the jet mass distribution can be stable against cuts in reconstruction loss. This may be important for estimating QCD…
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