Learnability of a hybrid quantum-classical neural network for graph-structured quantum data
- URL: http://arxiv.org/abs/2401.15665v3
- Date: Tue, 26 Aug 2025 03:34:18 GMT
- Title: Learnability of a hybrid quantum-classical neural network for graph-structured quantum data
- Authors: Yanying Liang, Sile Tang, Zhehao Yi, Haozhen Situ, Zhu-Jun Zheng,
- Abstract summary: We design a hybrid quantum-classical neural network with deep residual learning, termed Res-HQCNN, to handle graph-structured quantum data.<n>Our results show that the residual structure enables deeper Res-HQCNN models to learn graph-structured quantum data more efficiently and accurately.
- Score: 1.8920934738244022
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Graph-structured data commonly arise in many real-world applications, and this extends naturally into the quantum setting, where quantum data with inherent graph structures are frequently generated by typical quantum data sources. However, existing state-of-the-art models often lack training and evaluation on deeper quantum neural networks. In this work, we design a hybrid quantum-classical neural network with deep residual learning, termed Res-HQCNN, specifically designed to handle graph-structured quantum data.Building upon this architecture, we systematically explore the interplay between residual block structures and graph information in both training and testing phases. Through extensive experiments, we demonstrate that incorporating graph structure information into the quantum data significantly improves learning efficiency compared to the existing model. Additionally, we conduct comparative experiments to evaluate the effectiveness of residual blocks. Our results show that the residual structure enables deeper Res-HQCNN models to learn graph-structured quantum data more efficiently and accurately.
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