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Efficient attribute reduction based on rough sets and differential evolution algorithm

机译:基于粗糙集和差分演化算法的高效属性降低

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Attribute reduction algorithms in rough set theory can be classified into two groups, i.e. heuristics algorithms and computational intelligence algorithms. The former has good search efficiency but it can not find the global optimal reduction. Conversely, the latter is possible to find global optimal reduction but usually suffers from premature convergence. To address this problem, this paper proposes a two-stage algorithm for finding high quality reduction. In first stage, a classical differential evolution algorithm is employed to rapidly approach the optimal solution. When the premature convergence is detected, a local search algorithm which is intuitively a forward-backward heuristics is launched to improve the quality of the reduction. Experiments were performed on six UCI data sets and the results show that the proposed algorithm can outperform the existing computational intelligence algorithms.
机译:粗糙集理论中的属性减少算法可以分为两组,即启发式算法和计算智能算法。 前者有良好的搜索效率,但无法找到全球最佳减少。 相反,后者可以找到全球最佳减少,但通常会遭受早产的收敛。 为了解决这个问题,本文提出了一种用于找到高质量降低的两级算法。 在第一阶段,采用经典差分演化算法来快速接近最佳解决方案。 当检测到过早收敛时,推出直观直观启发式的本地搜索算法以提高减少的质量。 实验在六个UCI数据集上进行,结果表明,该算法可以优于现有的计算智能算法。

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