QKSAN: A Quantum Kernel Self-Attention Network
Ren-Xin Zhao, Jinjing Shi, Xuelong Li

TL;DR
QKSAN introduces a quantum self-attention network that combines quantum kernel methods with efficient information extraction, achieving high accuracy on image classification tasks with fewer parameters, paving the way for scalable quantum machine learning.
Contribution
The paper proposes the Quantum Kernel Self-Attention Network (QKSAN), integrating quantum kernels with self-attention, and demonstrates its effectiveness on image classification benchmarks.
Findings
Achieved over 98.05% accuracy on MNIST and Fashion MNIST.
Demonstrated fewer parameters than classical models with competitive performance.
Revealed potential quantum advantage in learning efficiency.
Abstract
Self-Attention Mechanism (SAM) excels at distilling important information from the interior of data to improve the computational efficiency of models. Nevertheless, many Quantum Machine Learning (QML) models lack the ability to distinguish the intrinsic connections of information like SAM, which limits their effectiveness on massive high-dimensional quantum data. To tackle the above issue, a Quantum Kernel Self-Attention Mechanism (QKSAM) is introduced to combine the data representation merit of Quantum Kernel Methods (QKM) with the efficient information extraction capability of SAM. Further, a Quantum Kernel Self-Attention Network (QKSAN) framework is proposed based on QKSAM, which ingeniously incorporates the Deferred Measurement Principle (DMP) and conditional measurement techniques to release half of quantum resources by mid-circuit measurement, thereby bolstering both feasibility…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Machine Learning in Materials Science · Quantum Information and Cryptography
MethodsSegment Anything Model
