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Machine-Learning Insights into the Entanglement-trainability Correlation of Parameterized Quantum Circuits

arXiv · (2024)

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Abstract
Variational quantum algorithms (VQAs) have emerged as the leading strategy to obtain quantum advantage on the current noisy intermediate-scale devices. However, their entanglement-trainability correlation, as the major reason for the barren plateau (BP) phenomenon, poses a challenge to their applications. In this Letter, we suggest a gate-to-tensor (GTT) encoding method for parameterized quantum circuits (PQCs), with which two long short-term memory networks (L-G networks) are trained to predict both entanglement and trainability. The remarkable capabilities of the L-G networks afford a statistical way to delve into the entanglement-trainability correlation of PQCs within a dataset encompassing millions of instances. This machine-learning-driven method first confirms that the more entanglement, the more possible the BP problem. Then, we observe that there still exist PQCs with both high entanglement and high trainability. Furthermore, the trained L-G networks result in an impressive increase in time efficiency by about one million times when constructing a PQC with specific entanglement and trainability, demonstrating their practical applications in VQAs.
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要点】:本文提出了一种基于门到张量(GTT)编码方法的参数化量子电路(PQC)训练方法,使用长短期记忆网络(L-G网络)预测PQC的纠缠和可训练性,揭示了纠缠与可训练性之间的相关性,并通过机器学习加速PQC构造,显著提高了时间效率。

方法】:作者使用GTT编码将PQC编码为机器学习模型可处理的形式,并训练L-G网络预测PQC的纠缠和可训练性。

实验】:通过训练L-G网络在包含数百万个实例的数据集上,实验验证了纠缠程度越高,出现 barren plateau 现象的可能性越大,同时发现存在既具有高纠缠又具有高可训练性的PQC。训练后的L-G网络在构造特定纠缠和可训练性的PQC时,效率提高了大约百万倍。文中未提及具体的数据集名称。