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A Combined Ant Colony and Differential Evolution Feature Selection Algorithm

机译:组合蚁群和差分演进特征选择算法

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Feature selection is an important step in many pattern recognition systems that aims to overcome the so-called curse of dimensionality problem. Although Ant Colony Optimization (ACO) proved to be a powerful technique in different optimization problems, but it still needs some improvements when applied to the feature selection problem. This is due to the fact that it builds its solutions sequentially, where in feature selection this behavior will most likely not lead to the optimal solution. In this paper, a novel feature selection algorithm based on a combination of ACO and a simple, yet powerful, Differential Evolution (DE) operator is presented. The proposed combination enhances both the exploration and exploitation capabilities of the search procedure. The new algorithm is tested on two biosignal-driven applications. The performance of the proposed algorithm is compared with other dimensionality reduction techniques to prove its superiority.
机译:特征选择是许多模式识别系统的一个重要步骤,其旨在克服所谓的维数问题诅咒。虽然蚁群优化(ACO)被证明是在不同优化问题中的强大技术,但在应用于特征选择问题时仍然需要一些改进。这是由于它依次构建其解决方案,其中在特征选择中,这种行为将很可能不会导致最佳解决方案。本文提出了一种基于ACO组合的新颖特征选择算法和简单,但功能强大的差分演进(DE)操作员。拟议的组合增强了搜索程序的探索和开发能力。新算法在两个生物功能驱动的应用程序上进行了测试。将所提出的算法的性能与其他维数减少技术进行比较,以证明其优越性。

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