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Finding new physics without learning about it: anomaly detection as a tool for searches at colliders

M. Crispim Romão, N. F. Castro, R. Pedro

2021The European Physical Journal C56 citationsDOIOpen Access PDF

Abstract

Abstract In this paper we propose a new strategy, based on anomaly detection methods, to search for new physics phenomena at colliders independently of the details of such new events. For this purpose, machine learning techniques are trained using Standard Model events, with the corresponding outputs being sensitive to physics beyond it. We explore three novel AD methods in HEP: Isolation Forest, Histogram-Based Outlier Detection, and Deep Support Vector Data Description; alongside the most customary Autoencoder. In order to evaluate the sensitivity of the proposed approach, predictions from specific new physics models are considered and compared to those achieved when using fully supervised deep neural networks. A comparison between shallow and deep anomaly detection techniques is also presented. Our results demonstrate the potential of semi-supervised anomaly detection techniques to extensively explore the present and future hadron colliders’ data.

Topics & Concepts

Anomaly detectionPhysics beyond the Standard ModelAnomaly (physics)Particle physicsSensitivity (control systems)PhysicsArtificial neural networkDeep learningComputer scienceArtificial intelligenceSupport vector machineMachine learningLarge Hadron ColliderStandard Model (mathematical formulation)Deep neural networksOutlierSupervised learningIsolation (microbiology)Order (exchange)Anomaly Detection Techniques and ApplicationsParticle physics theoretical and experimental studiesNetwork Security and Intrusion Detection
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