Kein Yukiyoshi;Taku Mikuriya;Hyeon Seok Rou;Giuseppe Thadeu Freitas de Abreu;Naoki Ishikawa
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引用次数: 0
摘要
在这篇文章中,我们提出了最大和与最大-最小分散问题的新公式,可以通过格罗弗自适应搜索(GAS)量子算法求解,并提供二次加速。分散问题是被归类为 NP-困难的组合优化问题,经常出现在编码理论和涉及最优码本设计的无线通信应用中。而 GAS 是一种量子穷举搜索算法,可用于实现成熟的最大似然最优解。然而,在传统的天真公式中,通常依赖于二进制向量空间,导致搜索空间的大小甚至令 GAS 望而却步。为了规避这一挑战,我们转而在 Dicke 状态(具有相等汉明权重的二进制向量的相等叠加)上搜索最佳分散问题,这大大缩小了搜索空间,通过消除惩罚项简化了量子电路。此外,我们还提出了一种用等级取代距离系数的方法,有助于减少量子比特的数量。我们的分析表明,与使用哈达玛变换的传统 GAS 相比,所提出的技术降低了查询复杂度,增强了基于量子的色散问题解决方案的可行性。
Quantum Speedup of the Dispersion and Codebook Design Problems
In this article, we propose new formulations of max-sum and max-min dispersion problems that enable solutions via the Grover adaptive search (GAS) quantum algorithm, offering quadratic speedup. Dispersion problems are combinatorial optimization problems classified as NP-hard, which appear often in coding theory and wireless communications applications involving optimal codebook design. In turn, GAS is a quantum exhaustive search algorithm that can be used to implement full-fledged maximum-likelihood optimal solutions. In conventional naive formulations, however, it is typical to rely on a binary vector spaces, resulting in search space sizes prohibitive even for GAS. To circumvent this challenge, we instead formulate the search of optimal dispersion problem over Dicke states, an equal superposition of binary vectors with equal Hamming weights, which significantly reduces the search space leading to a simplification of the quantum circuit via the elimination of penalty terms. In addition, we propose a method to replace distance coefficients with their ranks, contributing to the reduction of the number of qubits. Our analysis demonstrates that as a result of the proposed techniques, a reduction in query complexity compared to the conventional GAS using the Hadamard transform is achieved, enhancing the feasibility of the quantum-based solution of the dispersion problem.