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Embedding-Aware Quantum-Classical SVMs for Scalable Quantum Machine Learning

Published: July 28, 2025 | arXiv ID: 2508.00024v1

By: Sebastián Andrés Cajas Ordóñez , Luis Fernando Torres Torres , Mario Bifulco and more

Potential Business Impact:

Boosts quantum AI image recognition accuracy

Quantum Support Vector Machines face scalability challenges due to high-dimensional quantum states and hardware limitations. We propose an embedding-aware quantum-classical pipeline combining class-balanced k-means distillation with pretrained Vision Transformer embeddings. Our key finding: ViT embeddings uniquely enable quantum advantage, achieving up to 8.02% accuracy improvements over classical SVMs on Fashion-MNIST and 4.42% on MNIST, while CNN features show performance degradation. Using 16-qubit tensor network simulation via cuTensorNet, we provide the first systematic evidence that quantum kernel advantage depends critically on embedding choice, revealing fundamental synergy between transformer attention and quantum feature spaces. This provides a practical pathway for scalable quantum machine learning that leverages modern neural architectures.

Country of Origin
🇮🇪 🇮🇹 🇨🇴 Ireland, Colombia, Italy

Page Count
15 pages

Category
Physics:
Quantum Physics