16-21 March 2025
BHSS, Academia Sinica
Asia/Taipei timezone

Jet Discrimination with Quantum Complete Graph Neural Network

18 Mar 2025, 14:00
30m
Room 2 (BHSS, Academia Sinica)

Room 2

BHSS, Academia Sinica

Oral Presentation Track 10: Artificial Intelligence (AI) Hybrid Quantum Computing Workshop - I

Speaker

Yi-An Chen (National Taiwan University, Department of Physics)

Description

Machine learning, particularly deep neural networks, has been widely used in high-energy physics, demonstrating remarkable results in various applications. Furthermore, the extension of machine learning to quantum computers has given rise to the emerging field of quantum machine learning. In this paper, we propose the Quantum Complete Graph Neural Network (QCGNN), which is a variational quantum algorithm based model designed for learning on complete graphs. QCGNN with deep parametrized operators offers a polynomial speedup over its classical and quantum counterparts, leveraging the property of quantum parallelism. We investigate the application of QCGNN with the challenging task of jet discrimination, where the jets are represented as complete graphs. Additionally, we conduct a comparative analysis with classical models to establish a performance benchmark.

Primary authors

Prof. Kai-Feng Chen (National Taiwan University, Department of Physics) Yi-An Chen (National Taiwan University, Department of Physics)

Presentation materials

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