A Laplacian-based quantum graph neural networks for quantum semi-supervised learning

被引:0
|
作者
Gholipour, Hamed [1 ,2 ]
Bozorgnia, Farid [3 ]
Hambarde, Kailash [1 ]
Mohammadigheymasi, Hamzeh [1 ,4 ,5 ]
Mancilla, Javier [6 ]
Sequeira, Andre [7 ]
Neves, Joao [1 ]
Proenca, Hugo [8 ]
Challenger, Moharram [9 ,10 ]
机构
[1] Univ Beira Interior, Dept Comp Sci, Covilha, Portugal
[2] RAUVA Co, Lisbon, Portugal
[3] New Uzbekistan Univ, Dept Math, Tashkent, Uzbekistan
[4] Univ Tokyo, Atmosphere & Ocean Res Inst, Kashiwa, Japan
[5] Harvard Univ, Dept Earth & Planetary Sci, Cambridge, MA USA
[6] Falcolande Co, Vigo, Spain
[7] INESC TEC, Dept Informat, High Assurance Software Lab, Braga, Portugal
[8] Univ Beira Interior, Inst Telecomunicacoes, Covilha, Portugal
[9] Univ Antwerp, Dept Comp Sci, Antwerp, Belgium
[10] Flanders Make Strateg Res Ctr, AnSyMo Cosys Core Lab, Leuven, Belgium
关键词
Quantum semi-supervised learning (QSLL); Quantum graph learning; Parametrized quantum circuits; Laplacian QSSL; Entanglement; Test accuracy;
D O I
10.1007/s11128-025-04725-6
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
The Laplacian learning method has proven effective in classical graph-based semi-supervised learning, yet its quantum counterpart remains underexplored. This study systematically evaluates the Laplacian-based quantum semi-supervised learning (QSSL) approach across four benchmark datasets-Iris, Wine, Breast Cancer Wisconsin, and Heart Disease. By experimenting with varying qubit counts and entangling layers, we demonstrate that increased quantum resources do not necessarily lead to improved performance. Our findings reveal that the effectiveness of the method is highly sensitive to dataset characteristics, as well as the number of entangling layers. Optimal configurations, generally featuring moderate entanglement, strike a balance between model complexity and generalization. These results emphasize the importance of dataset-specific hyperparameter tuning in quantum semi-supervised learning frameworks.
引用
收藏
页数:20
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