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Search performance analysis of qubit convergence measure for quantum-inspired evolutionary algorithm introducing on maximum cut problem

机译:引入最大割问题的量子进化算法量子位收敛度量的搜索性能分析

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摘要

The quantum-inspired evolutionary algorithm (QEA) and QEA with a pair-swap strategy (QEAPS), where each gene is represented by a quantum bit (qubit) and the qubit is updated by a unitary transformation in both algorithms. QEA and QEAPS can automatically shift the evolution from a global search to a local search and have shown superior search performance to the classical genetic algorithm. However, the population gets into a locally optimal solution and the solution search stagnates when the probability amplitudes of qubit excessively converge to |0› or |1›. In this study, we have proposed a measure that can confirm convergence state of qubits. From the results of the computational experiment in the maximum cut problem, we have clarified that the proposed measure can estimate the state of the qubit, and the quality of the obtained solution is improved by applying the method for maintenance of diversity.
机译:量子启发式进化算法(QEA)和具有成对交换策略(QEAPS)的QEA,其中每个基因均由量子位(qubit)表示,而量子位通过两种算法中的unit变换来更新。 QEA和QEAPS可以自动将进化从全局搜索转移到本地搜索,并且已显示出优于传统遗传算法的搜索性能。但是,总体进入局部最优解,当qubit的概率幅度过度收敛于| 0›或| 1›时,解搜索停滞。在这项研究中,我们提出了一种可以确认量子位收敛状态的措施。从最大割问题的计算实验结果来看,我们澄清了所提出的措施可以估计量子位的状态,并且通过应用维持多样性的方法可以提高获得的解决方案的质量。

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