Povm-Based Quantum Self-Attention Neural Network

Jiachun Wei,Zhimin He,Chuangtao Chen, Maijie Deng,Haozhen Situ

2023 International Conference on Wavelet Analysis and Pattern Recognition (ICWAPR)(2023)

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摘要
Quantum Self-Attention Neural Network (QSANN) has demonstrated remarkable potential. However, it is limited to measuring only partial information from qubits, thereby restricting its information extraction capability. Moreover, the measurement process requires multiple measurements for each qubit, leading to inefficiency in utilizing the feature space. To address these challenges, this paper introduces a novel approach called Positive Operator-Valued Measure based Quantum Self-Attention Neural Network (POVM-QSANN). It leverages POVM operators as observables, enabling the extraction of comprehensive QKV (Query-Key-Value) feature vectors from each qubit. This innovative mechanism significantly enhances information extraction capability and efficiently utilizes the feature space. The experimental results underscore the considerable advancements of POVM-QSANN on MC and RP datasets. Particularly noteworthy is its remarkable accuracy increase of 9.68% compared to QSANN on the RP dataset.
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关键词
Quantum machine learning,Self-attention mechanism,Variational quantum algorithm,Positive Operator-Valued Measure
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