优化变分量子算法的多维池算法

Algorithms Pub Date : 2024-02-15 DOI:10.3390/a17020082
M. Jeng, Alvir Nobel, Vinayak Jha, David Levy, Dylan Kneidel, Manu Chaudhary, Ishraq Islam, Evan Baumgartner, Eade Vanderhoof, Audrey Facer, Manish Singh, Abina Arshad, E. El-Araby
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引用次数: 0

摘要

事实证明,卷积神经网络(CNN)是一类非常高效的机器学习(ML)架构,可通过保持数据局部性来处理多维数据,尤其是在计算机视觉领域。数据池是 CNN 的主要组成部分,在提取输入数据的重要特征和降低其维度方面发挥着至关重要的作用。然而,现有的 ML 算法并不能有效地实现多维池化。特别是,量子机器学习(QML)算法倾向于通过将多维数据表示/扁平化为简单的一维数据来忽略高维数据的局部性。在这项工作中,我们提出利用量子哈尔变换(QHT)和量子部分测量对多维数据执行广义池化操作。我们为所提出的技术提出了相应的退相干优化量子电路,并对电路进行了理论深度分析。我们使用从一维音频数据到二维图像数据再到三维高光谱数据的多维数据进行了实验工作,以证明所提方法的可扩展性。在实验中,我们利用 IBM Quantum 公司最先进的量子模拟器进行了有噪声和无噪声量子模拟。我们还通过报告结果的保真度,展示了我们提出的多维数据技术的效率。
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Optimizing Multidimensional Pooling for Variational Quantum Algorithms
Convolutional neural networks (CNNs) have proven to be a very efficient class of machine learning (ML) architectures for handling multidimensional data by maintaining data locality, especially in the field of computer vision. Data pooling, a major component of CNNs, plays a crucial role in extracting important features of the input data and downsampling its dimensionality. Multidimensional pooling, however, is not efficiently implemented in existing ML algorithms. In particular, quantum machine learning (QML) algorithms have a tendency to ignore data locality for higher dimensions by representing/flattening multidimensional data as simple one-dimensional data. In this work, we propose using the quantum Haar transform (QHT) and quantum partial measurement for performing generalized pooling operations on multidimensional data. We present the corresponding decoherence-optimized quantum circuits for the proposed techniques along with their theoretical circuit depth analysis. Our experimental work was conducted using multidimensional data, ranging from 1-D audio data to 2-D image data to 3-D hyperspectral data, to demonstrate the scalability of the proposed methods. In our experiments, we utilized both noisy and noise-free quantum simulations on a state-of-the-art quantum simulator from IBM Quantum. We also show the efficiency of our proposed techniques for multidimensional data by reporting the fidelity of results.
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