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Quantum-Inspired Estimation Of Distribution Algorithm To Solve The Travelling Salesman Problem

机译:Quantum-Inspired估算分发算法解决旅行推销员问题

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摘要

A novel Quantum-Inspired Estimation of Distribution Algorithm (QIEDA) is proposed to solve the Travelling Salesman Problem (TSP). The QIEDA uses a modified version of the W state quantum circuits to sample new solutions during the algorithm runtime. The algorithm behaviour is compared with other state-of-the-art population-based algorithms. QIEDA convergence is faster than other algorithms, and the obtained solutions improve as the size of the problem increases. Moreover, we show that quantum noise enhances the search of an optimal solution. Because quantum computers differ from each other, partly due to the topology that distributes the qubits, the computational cost of executing the QIEDA in different topologies is analyzed and an ideal topology is proposed for the TSP solved with the QIEDA.
机译:提出了一种新的量子灵感估计分布算法(Qieda)来解决旅行推销员问题(TSP)。 Qieda使用W STATE量子电路的修改版本来在算法运行时进行新的解决方案。 将该算法的行为与其他基于普遍的人口的算法进行比较。 Qieda收敛比其他算法快,所获得的解决方案随着问题的尺寸而提高。 此外,我们表明量子噪声增强了对最佳解决方案的搜索。 由于量子计算机彼此不同,部分原因是分配了在不同拓扑中执行Qieda的拓扑的计算成本,并提出了用Qieda解决的TSP解决了理想的拓扑。

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