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A novel quantum cooperative co-evolutionary algorithm for large-scale minimum attribute reduction optimization

机译:大规模最小属性约简优化的新型量子合作协同进化算法

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Due to the fact that conventional evolution-based attribute reduction algorithms are poor efficiency in accomplishing large-scale attribute reduction, a novel and efficient quantum cooperative co-evolutionary algorithm (named QCCAR) for minimum attribute reduction optimization in large-scale datasets is proposed in this paper. First, the self-adaptive quantum rotation angle and quantum entanglement strategies are adopted to update the operation of quantum revolving door, and the population diversity and convergence to the global optimum ensure to be improved fast. Second, a local-global best performance based cooperative co-evolutionary paradigm is designed to divide large-scale attribute sets into reasonable subsets, which are adaptively produced based on the assignment of decomposer credit and probability. Third, the representative of the subpopulation is selected to evolve the corresponding decomposed attribute subset so that the global optimization reduction set can be obtained quickly. The experimental results demonstrate that the proposed algorithm has better feasibility and effectiveness, comparison with other state-of-the-art algorithms. So it can provide an efficient solution to finding minimum attribute reduction for large-scale datasets.
机译:鉴于传统的基于进化的属性约简算法在实现大规模属性约简方面效率低下的事实,提出了一种新颖且高效的量子协作协同进化算法(称为QCCAR),用于大规模数据集的最小属性约简优化。这篇报告。首先,采用自适应的量子旋转角度和量子纠缠策略来更新量子旋转门的操作,并保证种群多样性和收敛到全局最优。其次,设计了一种基于局部-全局最佳性能的合作协同进化范式,将大规模属性集划分为合理的子集,这些子集是基于分解者信用和概率的分配而自适应生成的。第三,选择子种群的代表以发展相应的分解属性子集,以便可以快速获得全局最优化约简集。实验结果表明,与其他最新算法相比,该算法具有更好的可行性和有效性。因此,它可以为查找大型数据集的最小属性约简提供有效的解决方案。

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