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Parallel Particle Swarm Optimization for Attribute Reduction

机译:平行粒子群优化属性减少

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摘要

Attribute reduction is a key problem in rough set theory. A novel algorithm of attribute reduction based on parallel particle swarm optimization is proposed, which can significantly reduce execution time for complex large-scale data sets. This algorithm constructs heuristic information from the viewpoint of information theory, combines genetic idea and tabu operators with particle swarm optimization (PSO), redefines the updating process of particle swarm, and introduces the parallel strategy based on master-slave model with coarse grain in constructing the parallel PSO architecture. It maintains diversity of particles, which avoids the premature problem and restrains the degeneration phenomenon, and enhances the efficiency of attribute reduction. The simulation results show that this algorithm is more feasible and efficient compared with current approaches.
机译:属性减少是粗糙集理论的关键问题。提出了一种基于并行粒子群优化优化的基于并行粒子群优化的新颖性算法,这可以显着降低复杂大规模数据集的执行时间。从信息理论的角度来看,该算法构造了启发式信息,将遗传思想和禁忌运算符与粒子群优化(PSO)相结合,重新定义了粒子群的更新过程,并在构造中介绍了基于主机模型的并行策略并行PSO架构。它保持颗粒的多样性,避免过早问题并限制变性现象,并提高了变性的效率。仿真结果表明,与当前方法相比,该算法更加可行,高效。

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