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A quantum-inspired Tabu search algorithm for solving combinatorial optimization problems

机译:一种求解组合优化问题的量子启发式禁忌搜索算法

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In this study, we propose a novel quantuminspired evolutionary algorithm (QEA), called quantum inspired Tabu search (QTS). QTS is based on the classical Tabu search and characteristics of quantum computation, such as superposition. The process of qubit measurement is a probability operation that increases diversification; a quantum rotation gate used to searching toward attractive regions will increase intensification. This paper will show how to implement QTS into NP-complete problems such as 0/1 knapsack problems, multiple knapsack problems and the traveling salesman problem. These problems are important to computer science, cryptography and network security. Furthermore, our experimental results on 0/1 knapsack problems are compared with those of other heuristic algorithms, such as a conventional genetic algorithm, a Tabu search algorithm and the original QEA. The final outcomes show that QTS performs much better than other heuristic algorithms without premature convergence and with more efficiency. Also on multiple knapsack problems and the traveling salesman problem QTS verify its effectiveness.
机译:在这项研究中,我们提出了一种新颖的量子启发式进化算法(QEA),称为量子启发式禁忌搜索(QTS)。 QTS基于经典的禁忌搜索和量子计算的特性(例如叠加)。量子位的测量过程是一种增加多样性的概率运算。用于寻找引人注目的区域的量子旋转门将增加强度。本文将展示如何将QTS应用于NP完全问题,例如0/1背包问题,多个背包问题和旅行商问题。这些问题对于计算机科学,密码学和网络安全至关重要。此外,将我们在0/1背包问题上的实验结果与其他启发式算法(例如常规遗传算法,禁忌搜索算法和原始QEA)进行了比较。最终结果表明,QTS在没有过早收敛且效率更高的情况下比其他启发式算法要好得多。同样,在多个背包问题和旅行推销员问题上,QTS也证明了其有效性。

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