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Comparison of two types of quantum oracles based on Grover's adaptative search algorithm for multiobjective optimization problems

机译:基于格罗弗自适应搜索算法的两种类型的量子oracle的多目标优化问题比较

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Quantum Computing is a field of study in computer science based on the laws of quantum physics. Quantum computing is an attractive subject considering that quantum algorithms proved to be more efficient than classical algorithms and the advent of large-scale quantum computation. In particular, Grover's search algorithm is a quantum algorithm that is asymptotically faster than any classical search algorithm and it is relevant for the design of fast optimization algorithms. This article proposes two algorithms based on Grover's adaptative search for biobjective optimization problems where access to the objective functions is given via two different quantum oracles. The proposed algorithms, considering both types of oracles, are compared against NSGA-II, a highly cited multiobjective optimization evolutionary algorithm. Experimental evidence suggests that the quantum optimization methods proposed in this work are at least as effective as NSGA-II in average, considering an equal number of executions. Experimental results showed which oracle required less iterations for similar effectiveness.
机译:量子计算是基于量子物理学定律的计算机科学领域。考虑到量子算法比经典算法更有效以及大规模量子计算的出现,量子计算是一个有吸引力的主题。特别是,格罗弗(Grover)的搜索算法是一种量子算法,它比任何经典的搜索算法都渐近地更快,并且与快速优化算法的设计有关。本文针对双目标优化问题提出了两种基于Grover自适应搜索的算法,其中通过两个不同的量子预言器提供对目标函数的访问。将考虑了两种预言机的拟议算法与NSGA-II(一种被广泛引用的多目标优化进化算法)进行了比较。实验证据表明,考虑到相同的执行次数,这项工作中提出的量子优化方法平均至少与NSGA-II一样有效。实验结果表明,哪个oracle需要较少的迭代次数才能达到相似的效果。

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