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Feature Selection Algorithm Based on Multi Strategy Grey Wolf Optimizer

机译:基于多策略灰狼优化器的特征选择算法

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Feature selection is an important part of data mining, image recognition and other fields. The efficiency and accuracy of classification algorithm can be improved by selecting the best feature subset. The classical feature selection technology has some limitations, and heuristic optimization algorithm for feature selection is an alternative method to solve these limitations and find the optimal solution. In this paper, we proposed a Multi Strategy Grey Wolf Optimizer algorithm (MSGWO) based on random guidance, local search and subgroup cooperation strategies for feature selection, which solves the problem that the traditional grey wolf optimizer algorithm (GWO) is easy to fall into local optimization with a single search strategy. Among them, the random guidance strategy can make full use of the random characteristics to enhance the global search ability of the population, and the local search strategy makes grey wolf individuals make full use of the search space around the current best solution, and the subgroup cooperation strategy is very important to balance the global search and local search of the algorithm in the iterative process. MSGWO algorithm cooperates with each other in three strategies to update the location of grey wolf individuals, and enhances the global and local search ability of grey wolf individuals. Experimental results show that MSGWO can quickly find the optimal feature combination and effectively improve the performance of the classification model.
机译:特征选择是数据挖掘,图像识别和其他领域的重要组成部分。通过选择最佳特征子集可以提高分类算法的效率和准确性。经典的特征选择技术有一些局限性,用于特征选择的启发式优化算法是解决这些局限性并找到最佳解决方案的另一种方法。本文提出了一种基于随机导引,局部搜索和子群协作策略进行特征选择的多策略灰狼优化器算法(MSGWO),解决了传统的灰狼优化器算法容易陷入的问题。使用单一搜索策略进行局部优化。其中,随机导引策略可以充分利用随机特征来增强人群的整体搜索能力,而局部搜索策略可以使灰太狼个体充分利用当前最佳解和子群周围的搜索空间。合作策略对于在迭代过程中平衡算法的全局搜索和局部搜索非常重要。 MSGWO算法通过三种策略相互配合,更新灰太狼个体的位置,增强了灰太狼个体的全局和局部搜索能力。实验结果表明,MSGWO可以快速找到最优特征组合,有效提高分类模型的性能。

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