Research on Feature Selection Algorithm Based on Mixed Model

Ming He
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Abstract

Reduct finding, especially optimal reduct finding, similar to feature selection problem, is a crucial task in rough set applications to data mining. In this paper, we have studied the basic concepts of rough set theory, and discussed several special cases of the ant colony optimization metaheuristic algorithms. Based on the above study, we propose a feature selection algorithm within a mixed framework based on rough set theory and ant colony optimization. experimental results show that the algorithm of this paper is flexible for feature selection.
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基于混合模型的特征选择算法研究
约简发现,特别是最优约简发现,类似于特征选择问题,是粗糙集应用于数据挖掘中的关键任务。本文研究了粗糙集理论的基本概念,讨论了蚁群优化元启发式算法的几个特例。在此基础上,我们提出了一种基于粗糙集理论和蚁群优化的混合框架下的特征选择算法。实验结果表明,该算法在特征选择上具有一定的灵活性。
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