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Style-based quantum generative adversarial networks for Monte Carlo events

Carlos Bravo-Prieto, Julien Baglio, Marco Cè, Anthony Francis, Dorota M. Grabowska, Stefano Carrazza

2022Quantum45 citationsDOIOpen Access PDF

Abstract

We propose and assess an alternative quantum generator architecture in the context of generative adversarial learning for Monte Carlo event generation, used to simulate particle physics processes at the Large Hadron Collider (LHC). We validate this methodology by implementing the quantum network on artificial data generated from known underlying distributions. The network is then applied to Monte Carlo-generated datasets of specific LHC scattering processes. The new quantum generator architecture leads to a generalization of the state-of-the-art implementations, achieving smaller Kullback-Leibler divergences even with shallow-depth networks. Moreover, the quantum generator successfully learns the underlying distribution functions even if trained with small training sample sets; this is particularly interesting for data augmentation applications. We deploy this novel methodology on two different quantum hardware architectures, trapped-ion and superconducting technologies, to test its hardware-independent viability.

Topics & Concepts

Computer scienceLarge Hadron ColliderMonte Carlo methodGenerator (circuit theory)Quantum computerContext (archaeology)QuantumTheoretical computer scienceArtificial intelligenceComputer engineeringPhysicsParticle physicsMathematicsQuantum mechanicsStatisticsBiologyPaleontologyPower (physics)Quantum Computing Algorithms and ArchitectureParallel Computing and Optimization TechniquesComputational Physics and Python Applications
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