Litcius/Paper detail

Detecting anomalous quartic gauge couplings using the isolation forest machine learning algorithm

Li Jiang, Yu-Chen Guo, Ji-Chong Yang

2021Physical review. D/Physical review. D.22 citationsDOIOpen Access PDF

Abstract

The search of new physics (NP) beyond the Standard Model is one of the most important tasks of high energy physics. A common characteristic of the NP signals is that they are usually small in number and kinematically different. We use a model independent strategy to study the phenomenology of NP by directly picking out and studying the kinematically unusual events. For this purpose, the isolation forest (IF) algorithm is applied, which is found to be efficient in identifying the signal events of the anomalous quartic gauge couplings (aQGCs). The IF algorithm can also be used to constrain the coefficients of aQGCs. As a machine learning algorithm, the IF algorithm shows good prospects in future studies of NP.

Topics & Concepts

Quartic functionGauge (firearms)Isolation (microbiology)Computer scienceAlgorithmArtificial intelligenceParticle physicsPhysicsMachine learningMathematicsGeographyPure mathematicsBiologyArchaeologyMicrobiologyParticle physics theoretical and experimental studiesComputational Physics and Python ApplicationsParticle Detector Development and Performance