Graph Representation Learning (GRL) has emerged as a cornerstone technique for analysing complex, networked data across diverse domains, including biological systems, social networks, and data analysis. Traditional GRL methods often struggle to capture intricate relationships within complex graphs, particularly those exhibiting non-trivial structural properties such as power-law distributions or hierarchical structures. This paper introduces a novel quantum-inspired algorithm for GRL, utilizing hybrid Quantum-Classical Walks to overcome these limitations. Our approach combines the benefits of both quantum and classical dynamics, allowing the walker to simultaneously explore both highly local and far-reaching connections within the graph. Preliminary results for a case study in network community detection shows that this hybrid dynamic enables the algorithm to adapt effectively to complex graph topologies, offering a robust and versatile solution for GRL tasks.

Hybrid Quantum-Classical Walks for Graph Representation Learning in Community Detection / A. Marín, M. Soto-Gomez, G. Valentini, E. Casiraghi, C. Cano, D. Manzano - In: 2025 IEEE International Conference on Quantum Artificial Intelligence (QAI)Prima edizione. - [s.l] : Institute of Electrical and Electronics Engineers (IEEE), 2025. - ISBN 979-8-3315-6986-0. - pp. 55-60 (( QAI International Conference on Quantum Artificial Intelligence : November, 02 - 05 Napoli 2025 [10.1109/qai63978.2025.00016].

Hybrid Quantum-Classical Walks for Graph Representation Learning in Community Detection

M. Soto-Gomez;G. Valentini;E. Casiraghi;
2025

Abstract

Graph Representation Learning (GRL) has emerged as a cornerstone technique for analysing complex, networked data across diverse domains, including biological systems, social networks, and data analysis. Traditional GRL methods often struggle to capture intricate relationships within complex graphs, particularly those exhibiting non-trivial structural properties such as power-law distributions or hierarchical structures. This paper introduces a novel quantum-inspired algorithm for GRL, utilizing hybrid Quantum-Classical Walks to overcome these limitations. Our approach combines the benefits of both quantum and classical dynamics, allowing the walker to simultaneously explore both highly local and far-reaching connections within the graph. Preliminary results for a case study in network community detection shows that this hybrid dynamic enables the algorithm to adapt effectively to complex graph topologies, offering a robust and versatile solution for GRL tasks.
Representation learning; Adaptation models; Quantum system; Data analysis; Network topology; Social networking (online); Heuristic algorithms; Biological systems; Topology; Artificial intelligence; quantum walks; graph representation learning; random walks; open quantum systems;
Settore INFO-01/A - Informatica
   National Center for Gene Therapy and Drugs based on RNA Technology (CN3 RNA)
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   MINISTERO DELL'UNIVERSITA' E DELLA RICERCA
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2025
Institute of Electrical and Electronics Engineers (IEEE)
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1231576
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