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Preprint
Report number arXiv:2408.03427
Title A Study on Quantum Graph Neural Networks Applied to Molecular Physics
Author(s) Piperno, Simone (U. Rome La Sapienza (main)) ; Ceschini, Andrea (U. Rome La Sapienza (main)) ; Chang, Su Yeon (CERN ; LPHE, Lausanne) ; Grossi, Michele (CERN) ; Vallecorsa, Sofia (CERN) ; Panella, Massimo (U. Rome La Sapienza (main))
Imprint 2024-08-06
Number of pages 20
Note 20 pages, 10 figures, 3 tables
Subject category quant-ph ; General Theoretical Physics
Abstract This paper introduces a novel architecture for Quantum Graph Neural Networks, which is significantly different from previous approaches found in the literature. The proposed approach produces similar outcomes with respect to previous models but with fewer parameters, resulting in an extremely interpretable architecture rooted in the underlying physics of the problem. The architectural novelties arise from three pivotal aspects. Firstly, we employ an embedding updating method that is analogous to classical Graph Neural Networks, therefore bridging the classical-quantum gap. Secondly, each layer is devoted to capturing interactions of distinct orders, aligning with the physical properties of the system. Lastly, we harness SWAP gates to emulate the problem's inherent symmetry, a novel strategy not found currently in the literature. The obtained results in the considered experiments are encouraging to lay the foundation for continued research in this field.
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Copyright/License preprint: (License: CC BY 4.0)



 


 Datensatz erzeugt am 2024-08-22, letzte Änderung am 2024-11-11


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