An Adaptive Hybrid Quantum Algorithm for the Metric Traveling Salesman Problem

Fei Li, A. Mazumder
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Abstract

In this paper, we design, analyze, and evaluate a hybrid quantum algorithm for the metric traveling salesman problem (TSP). TSP is a well-studied NP-complete problem that many algorithmic techniques have been developed for, on both classic computers and quantum computers. The existing literature of algorithms for TSP are neither adaptive to input data nor suitable for processing medium-size data on the modern classic and quantum machines. In this work, we leverage the classic computers’ power (large memory) and the quantum computers’ power (quantum parallelism), based on the input data, to fasten the hybrid algorithm’s overall running time. Our algorithmic ideas include trimming the input data efficiently using a classic algorithm, finding an optimal solution for the post-processed data using a quantum-only algorithm, and constructing an optimal solution for the untrimmed data input efficiently using a classic algorithm. We conduct experiments to compare our hybrid algorithm against the state-of-the-art classic and quantum algorithms on real data sets. The experimental results show that our solution truly outperforms the others and thus confirm our theoretical analysis. This work provides insightful quantitative tools for people and compilers to choose appropriate quantum or classical or hybrid algorithms, especially in the NISQ (noisy intermediate-scale quantum) era, for NP-complete problems such as TSP.
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度量旅行商问题的自适应混合量子算法
本文设计、分析并评价了一种用于度量旅行商问题(TSP)的混合量子算法。TSP是一个被充分研究的np完全问题,许多算法技术已经在经典计算机和量子计算机上开发出来。现有的TSP算法文献既不适应输入数据,也不适合在现代经典机器和量子机器上处理中等规模的数据。在这项工作中,我们利用经典计算机的能力(大内存)和量子计算机的能力(量子并行性),基于输入数据,加快混合算法的整体运行时间。我们的算法思想包括使用经典算法有效地修剪输入数据,使用纯量子算法为后处理数据找到最优解,以及使用经典算法有效地为未修剪的数据输入构建最优解。我们进行了实验,将我们的混合算法与最先进的经典算法和量子算法在实际数据集上进行比较。实验结果表明,我们的解决方案确实优于其他方案,从而证实了我们的理论分析。这项工作为人们和编译者提供了有洞察力的定量工具,以选择适当的量子或经典或混合算法,特别是在NISQ(噪声中等规模量子)时代,用于np完全问题,如TSP。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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