基于SDP初始化暖启动的QAOA经典与量子桥接

R. Tate, M. Farhadi, C. Herold, G. Mohler, Swati Gupta
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引用次数: 37

摘要

在极大切问题的背景下,研究了量子近似优化算法。噪声量子器件只能在较低的电路深度下精确地执行QAOA,而具有经典挑战性的问题实例可能需要相对较高的电路深度。这是由于需要在可能较大的图中建立可达顶点对之间的相关性[16]。为了提高低深度QAOA的求解能力,我们引入了一个经典的预处理步骤,该步骤通过图中可能切割的偏置叠加来初始化QAOA,称为热启动。特别地,我们用最大切割问题的低秩半确定规划松弛的解来初始化QAOA。我们的实验结果表明,这种QAOA的变体,称为QAOA-warm,在较低的电路深度上,在解质量和训练时间上都优于标准QAOA。虽然这种改进部分是由于经典的热启动,但我们发现了在小深度使用QAOA电路进一步改进的有力证据。我们提供了改进性能的实验证据以及提出的框架的理论特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bridging Classical and Quantum with SDP initialized warm-starts for QAOA
We study the Quantum Approximate Optimization Algorithm (QAOA) in the context of the Max-Cut problem. Noisy quantum devices are only able to accurately execute QAOA at low circuit depths, while classically-challenging problem instances may call for a relatively high circuit-depth. This is due to the need to build correlations between reachable pairs of vertices in potentially large graphs [16]. To enhance the solving power of low-depth QAOA, we introduce a classical pre-processing step that initializes QAOA with a biased superposition of possible cuts in the graph, referred to as a warm-start. In particular, we initialize QAOA with a solution to a low-rank semidefinite programming relaxation of the Max-Cut problem. Our experimental results show that this variant of QAOA, called QAOA-warm, is able to outperform standard QAOA on lower circuit depths in solution quality and training time. While this improvement is partly due to the classical warm-start, we find strong evidence of further improvement using QAOA circuit at small depth. We provide experimental evidence of improved performance as well as theoretical properties of the proposed framework.
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