A quantum residual attention neural network for high-precision material property prediction

IF 2.2 3区 物理与天体物理 Q1 PHYSICS, MATHEMATICAL
Qingchuan Yang, Wenjun Zhang, Lianfu Wei
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引用次数: 0

Abstract

The rapid advancement of quantum neural networks has led to the application of a range of quantum machine learning algorithms, such as the hybrid quantum convolutional neural network (HQCNN), in various data processing tasks. To further enhance the convergence rate and accuracy of learning from a small number of samples, we introduce a novel model called quantum residual attention neural network (QRANN), which incorporates a quantum residual attention layer (QRAL) to reduce the depth of the quantum circuit and the number of trained parameters. The benefits of this new model are demonstrated through its application to the efficient prediction of material properties based on component optimization. Specifically, we conducted numerical experiments using publicly available alloy material datasets from a hackathon competition to predict the properties of alloy materials based on their composition. The results indicate that the proposed QRANN algorithm exhibits superior performance in terms of training convergence speed, prediction accuracy, and generalization ability compared to HQCNN, QSANN, variational quantum regression (VQR) algorithm, and classical multilayer perceptron. This suggests that QRANN is particularly well-suited for learning from limited datasets. Notably, by introducing a fully parameterized QRAL, QRANN can be implemented with fewer parameters and a lower circuit depth compared to HQCNN, using approximately only 74% and 58% of the parameters and circuit depth used in HQCNN experiments, respectively. Therefore, the proposed algorithm can be feasibly realized using current noisy intermediate-scale quantum devices.

高精度材料性能预测的量子剩余注意神经网络
量子神经网络的快速发展导致了一系列量子机器学习算法的应用,例如混合量子卷积神经网络(HQCNN),用于各种数据处理任务。为了进一步提高从少量样本中学习的收敛速度和准确性,我们引入了一种称为量子剩余注意神经网络(QRANN)的新模型,该模型采用量子剩余注意层(QRAL)来减少量子电路的深度和训练参数的数量。通过将该模型应用于基于构件优化的材料性能的有效预测,证明了该模型的优越性。具体来说,我们使用黑客马拉松比赛中公开的合金材料数据集进行了数值实验,以根据合金材料的成分预测合金材料的性能。结果表明,与HQCNN、QSANN、变分量子回归(VQR)算法和经典多层感知器相比,本文提出的QRANN算法在训练收敛速度、预测精度和泛化能力等方面均表现出优越的性能。这表明QRANN特别适合于从有限的数据集学习。值得注意的是,通过引入全参数化QRAL,与HQCNN相比,QRANN可以用更少的参数和更低的电路深度来实现,分别只使用HQCNN实验中使用的大约74%和58%的参数和电路深度。因此,该算法可以在现有的有噪声的中尺度量子器件上实现。
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来源期刊
Quantum Information Processing
Quantum Information Processing 物理-物理:数学物理
CiteScore
4.10
自引率
20.00%
发文量
337
审稿时长
4.5 months
期刊介绍: Quantum Information Processing is a high-impact, international journal publishing cutting-edge experimental and theoretical research in all areas of Quantum Information Science. Topics of interest include quantum cryptography and communications, entanglement and discord, quantum algorithms, quantum error correction and fault tolerance, quantum computer science, quantum imaging and sensing, and experimental platforms for quantum information. Quantum Information Processing supports and inspires research by providing a comprehensive peer review process, and broadcasting high quality results in a range of formats. These include original papers, letters, broadly focused perspectives, comprehensive review articles, book reviews, and special topical issues. The journal is particularly interested in papers detailing and demonstrating quantum information protocols for cryptography, communications, computation, and sensing.
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