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Feature Selection with a Local Search Strategy Based on the Forest Optimization Algorithm

机译:具有基于林优化算法的本地搜索策略的功能选择

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Feature selection has been widely used in data mining and machine learning.Its objective is to select a minimal subset of features according to some reasonable criteria so as to solve the original task more quickly.In this article,a feature selection algorithm with local search strategy based on the forest optimization algorithm,namely FSLSFOA,is proposed.The novel local search strategy in local seeding process guarantees the quality of the feature subset in the forest.Next,the fitness function is improved,which not only considers the classification accuracy,but also considers the size of the feature subset.To avoid falling into local optimum,a novel global seeding method is attempted,which selects trees on the bottom of candidate set and gives the algorithm more diversities.Finally,FSLSFOA is compared with four feature selection methods to verify its effectiveness.Most of the results are superior to these comparative methods.
机译:特征选择已广泛用于数据挖掘和机器学习。目的是根据一些合理的标准选择最小的特征子集,以便更快地解决原始任务。本文,具有本地搜索策略的特征选择算法基于森林优化算法,即FSLSFOA。提出了本地播种过程中的新型本地搜索策略保证了Forest.Next中的特征子集的质量.Next,改进了健身功能,这不仅考虑了分类准确性,而且还考虑了特征子集的大小。要避免落入本地最佳状态,尝试了一种新的全局种子方法,该方法是在候选集的底部选择树木,并为算法提供更多多样性。最后,与四个特征选择方法进行比较FSLSFOA为了验证其有效性。尽管如此,结果优于这些比较方法。

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