Transforming two-dimensional tensor networks into quantum circuits for supervised learning

Zhihui Song, Jinchen Xu, Xin Zhou, X. Ding, Zheng Shan
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Abstract

There have been numerous quantum neural networks reported, but they struggle to match traditional neural networks in accuracy. Given the huge improvement of the neural network models’ accuracy by two-dimensional tensor network states in classical tensor network machine learning, it is promising to explore whether its application in quantum machine learning can extend the performance boundary of the models. Here, we transform two-dimensional tensor networks into quantum circuits for supervised learning. Specifically, we encode two-dimensional tensor networks into quantum circuits through rigorous mathematical proofs for constructing model ansätze, including string-bond states, entangled-plaquette states and isometric tensor network states. In addition, we propose adaptive data encoding methods and combine with tensor networks. We construct a tensor-network-inspired quantum circuit supervised learning framework for transferring tensor network machine learning from classical to quantum, and build several novel two-dimensional tensor network-inspired quantum classifiers based on this framework. Finally, we propose a parallel quantum machine learning method for multi-class classification to construct 2D TNQC-based multi-class classifiers. Classical simulation results on the MNIST benchmark dataset show that our proposed models achieve the state-of-the-art accuracy performance, significantly outperforming other quantum classifiers on both binary and multi-class classification tasks, and beat simple convolutional classifiers on a fair track with identical inputs. The noise resilience of the models makes them successfully run and work in a real quantum computer.
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将二维张量网络转化为用于监督学习的量子电路
目前已有大量量子神经网络的报道,但它们在精度上难以与传统神经网络相媲美。鉴于二维张量网络态在经典张量网络机器学习中极大地提高了神经网络模型的准确性,探索其在量子机器学习中的应用是否能扩展模型的性能边界是很有前景的。在此,我们将二维张量网络转化为量子电路,用于监督学习。具体来说,我们通过严格的数学证明将二维张量网络编码成量子电路,以构建模型解析,包括弦键状态、纠缠拼板状态和等距张量网络状态。此外,我们还提出了自适应数据编码方法,并与张量网络相结合。我们构建了一个张量网络启发的量子电路监督学习框架,用于将张量网络机器学习从经典转移到量子,并在此框架基础上构建了多个新型二维张量网络启发量子分类器。最后,我们提出了一种用于多类分类的并行量子机器学习方法,以构建基于二维 TNQC 的多类分类器。在 MNIST 基准数据集上的经典仿真结果表明,我们提出的模型达到了最先进的准确度性能,在二元和多类分类任务上都明显优于其他量子分类器,并在相同输入的公平轨道上击败了简单的卷积分类器。模型的抗噪能力使它们能在真正的量子计算机中成功运行和工作。
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