A new wrapper feature selection model using Skewed Variable Neighborhood Search with CE-SVM algorithm

Naoual El Aboudi, Laila Benhlima
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引用次数: 1

Abstract

Feature selection is an important step in many Machine Learning classification problems. It reduces the dimensionality of the feature space by removing noisy, irrelevant and redundant data, such that classification accuracy is enhanced while computational time remains affordable. In this paper, we present a new wrapper feature subset selection model based on Skewed Variable Neighborhood Search (SVNS). In order to determine classification accuracy, we endorse Support Vector Machine (SVM) which is a well tested classification algorithm. The optimal feature subset is investigated using SVNS while SVM hyperparameters are automatically tuned by Cross Entropy (CE) technique which is recognized to be a powerful optimization tool. The performance of proposed model is compared with some existent methods regarding the task of feature selection on 3 well-known UCI datasets. Simulation results show that the suggested system achieves promising classification accuracy using a smaller feature set.
基于CE-SVM算法的倾斜变量邻域搜索包装器特征选择模型
特征选择是许多机器学习分类问题的重要步骤。它通过去除噪声、不相关和冗余数据来降低特征空间的维数,从而在计算时间负担得起的情况下提高分类精度。提出了一种新的基于倾斜变量邻域搜索(SVNS)的包装器特征子集选择模型。为了确定分类精度,我们支持支持向量机(SVM),这是一种经过测试的分类算法。利用SVM进行最优特征子集的研究,同时利用交叉熵(Cross Entropy, CE)技术对SVM超参数进行自动调优,是一种强大的优化工具。在3个已知的UCI数据集上,将所提模型与现有方法在特征选择任务上的性能进行了比较。仿真结果表明,该系统使用较小的特征集实现了较好的分类精度。
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