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An Improved Quantum Genetic Algorithm

机译:一种改进的量子遗传算法

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摘要

Quantum genetic algorithm (QGA) is the combination between genetic algorithm and quantum computing. In this paper, a chromosome of the standard QGA is seen as a node and the chromosome population is regarded as a network. Then the reasons for the prematurity and the stagnation of the standard QGA are analyzed from the perspective of network structure. To solve the two problems, an improved quantum genetic algorithm (IQGA) based on the small world theory is proposed. In IQGA, chromosomes encoded with qubits are divided into some sub-groups and the NW network model is introduced into the population structure. When updating chromosomes, an optimal chromosome in locality or in other sub-groups is chosen based on a certain probability as the evolution target for each chromosome. The new network structure of the chromosome population has a relatively moderate clustering coefficient and is favorable to the diversity of individual chromosomes. Tests of three classic functions prove the effectiveness and superiority of IQGA.
机译:量子遗传算法(QGA)是遗传算法与量子计算之间的组合。本文认为标准QGA的染色体被视为节点,染色体群体被视为网络。然后,从网络结构的角度分析了前滋生的原因和标准QGA的停滞。为了解决这两个问题,提出了一种基于小世界理论的改进量子遗传算法(IQGA)。在IQGA中,用Qubits编码的染色体被分成一些子组,并且NW网络模型被引入人口结构。当更新染色体时,基于每种染色体的进化靶标,选择在局部或其他亚组中的最佳染色体。染色体群体的新网络结构具有相对温和的聚类系数,并且有利于单个染色体的多样性。三种经典功能的测试证明了IQGA的有效性和优越性。

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