Hybrid quantum search with genetic algorithm optimization

IF 3.5 4区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE PeerJ Computer Science Pub Date : 2024-08-05 DOI:10.7717/peerj-cs.2210
Sebastian Mihai Ardelean, Mihai Udrescu
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Abstract

Quantum genetic algorithms (QGA) integrate genetic programming and quantum computing to address search and optimization problems. The standard strategy of the hybrid QGA approach is to add quantum resources to classical genetic algorithms (GA), thus improving their efficacy (i.e., quantum optimization of a classical algorithm). However, the extent of such improvements is still unclear. Conversely, Reduced Quantum Genetic Algorithm (RQGA) is a fully quantum algorithm that reduces the GA search for the best fitness in a population of potential solutions to running Grover’s algorithm. Unfortunately, RQGA finds the best fitness value and its corresponding chromosome (i.e., the solution or one of the solutions of the problem) in exponential runtime, O(2n/2), where n is the number of qubits in the individuals’ quantum register. This article introduces a novel QGA optimization strategy, namely a classical optimization of a fully quantum algorithm, to address the RQGA complexity problem. Accordingly, we control the complexity of the RQGA algorithm by selecting a limited number of qubits in the individuals’ register and fixing the remaining ones as classical values of ‘0’ and ‘1’ with a genetic algorithm. We also improve the performance of RQGA by discarding unfit solutions and bounding the search only in the area of valid individuals. As a result, our Hybrid Quantum Algorithm with Genetic Optimization (HQAGO) solves search problems in O(2(n−k)/2) oracle queries, where k is the number of fixed classical bits in the individuals’ register.
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混合量子搜索与遗传算法优化
量子遗传算法(QGA)整合了遗传编程和量子计算,以解决搜索和优化问题。混合量子遗传算法的标准策略是为经典遗传算法(GA)添加量子资源,从而提高其功效(即经典算法的量子优化)。然而,这种改进的程度尚不明确。相反,还原量子遗传算法(RQGA)是一种全量子算法,它将在潜在解群中寻找最佳适应度的遗传算法简化为运行格罗弗算法。遗憾的是,RQGA 在指数级运行时间(O(2n/2),其中 n 是个体量子寄存器中的量子比特数)内找到最佳适配值及其对应的染色体(即问题的解决方案或解决方案之一)。本文介绍了一种新颖的 QGA 优化策略,即对全量子算法进行经典优化,以解决 RQGA 复杂性问题。因此,我们通过在个体寄存器中选择有限数量的量子位,并用遗传算法将其余量子位固定为经典的 "0 "和 "1 "值,来控制 RQGA 算法的复杂度。我们还通过丢弃不合适的解决方案和只在有效个体区域内进行搜索来提高 RQGA 的性能。因此,我们的遗传优化混合量子算法(HQAGO)只需 O(2(n-k)/2) 次神谕查询就能解决搜索问题,其中 k 是个体寄存器中固定经典位的数量。
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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来源期刊
PeerJ Computer Science
PeerJ Computer Science Computer Science-General Computer Science
CiteScore
6.10
自引率
5.30%
发文量
332
审稿时长
10 weeks
期刊介绍: PeerJ Computer Science is the new open access journal covering all subject areas in computer science, with the backing of a prestigious advisory board and more than 300 academic editors.
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