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A Novel Feature Selection Method Based on Salp Swarm Algorithm

机译:一种基于SALP群算法的新颖特征选择方法

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Biomedical and clinical data usually contain some redundant and irrelevant features, which may lead to misleading and over-fitting problems in the process of modeling algorithms. In order to effectively remove irrelevant or redundant features, the use of feature selection methods can reduce the number of features, improve the accuracy of the model, and reduce the running time. In recent years, Wrapper-based feature selection algorithms have received widespread attention because they can obtain better accuracy. This paper uses a wrapper feature selection algorithm FS_SSA based on Salp swarm. In the FS_SSA algorithm, the position of the follower salps is updated by the relative position of the Salp. The followers gradually moves to the leading Salp. The gradual movement of the follower salps can make the Salp Swarm Algorithm not easy to fall into a local optimal state. The two behaviors of exploration and development in subset searches are balanced, and the search process of feature subsets is prevented from falling into the local optimum. Experimental results based on public medical data sets show that the FS_SSA has better classification performance than other methods.
机译:生物医学和临床数据通常包含一些冗余和无关的功能,这可能导致建模算法过程中的误导性和过度拟合问题。为了有效地消除无关或冗余功能,使用特征选择方法可以减少功能的数量,提高模型的准确性,并减少运行时间。近年来,基于包装器的特征选择算法已经获得了广泛的关注,因为它们可以获得更好的准确性。本文使用基于SALP Swarm的包装器特征选择算法FS_SSA。在FS_SSA算法中,从动杆SALP的位置由SALP的相对位置更新。追随者逐渐移动到领先的Salp。追随者Salps的逐渐移动可以使SALP群算法不易落入局部最佳状态。子集搜索的探索和开发的两个行为是平衡的,并且可以防止特征子集的搜索过程落入本地最佳。基于公共医疗数据集的实验结果表明,FS_SSA具有比其他方法更好的分类性能。

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