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首页> 外文期刊>Journal of signal processing systems for signal, image, and video technology >Decomposition Algorithms for Solving NP-hard Problems on a Quantum Annealer
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Decomposition Algorithms for Solving NP-hard Problems on a Quantum Annealer

机译:用于求解Quantum Ennevers的NP硬问题的分解算法

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摘要

NP-hard problems such as the maximum clique or minimum vertex cover problems, two of Karp's 21 NP-hard problems, have several applications in computational chemistry, biochemistry and computer network security. Adiabatic quantum annealers can search for the optimum value of such NP-hard optimization problems, given the problem can be embedded on their hardware. However, this is often not possible due to certain limitations of the hardware connectivity structure of the annealer. This paper studies a general framework for a decomposition algorithm for NP-hard graph problems aiming to identify an optimal set of vertices. Our generic algorithm allows us to recursively divide an instance until the generated subproblems can be embedded on the quantum annealer hardware and subsequently solved. The framework is applied to the maximum clique and minimum vertex cover problems, and we propose several pruning and reduction techniques to speed up the recursive decomposition. The performance of both algorithms is assessed in a detailed simulation study.
机译:诸如最大的Clique或最小顶点掩护问题等难题,其中两个karp的21个np-coll-colly问题,在计算化学,生物化学和计算机网络安全方面具有若干应用。绝热量子退火者可以搜索此类NP-Hard优化问题的最佳值,鉴于问题可以嵌入在其硬件上。然而,由于退火器的硬件连接结构的某些限制,这通常是不可能的。本文研究了一种用于分解算法的一般框架,用于旨在识别最佳顶点集的NP硬图问题。我们的通用算法允许我们递归地划分实例,直到所生成的子问题可以嵌入在量子退换器硬件上并随后解决。该框架适用于最大的集团和最小顶点覆盖问题,我们提出了多种修剪和减少技术来加速递归分解。在详细的仿真研究中评估了这两种算法的性能。

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