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Feature weighting and SVM parameters optimization based on genetic algorithms for classification problems

机译:基于遗传算法的特征加权与SVM参数优化分类问题

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摘要

Support Vector Machines (SVMs) are widely known as an efficient supervised learning model for classification problems. However, the success of an SVM classifier depends on the perfect choice of its parameters as well as the structure of the data. Thus, the aim of this research is to simultaneously optimize the parameters and feature weighting in order to increase the strength of SVMs. We propose a novel hybrid model, the combination of genetic algorithms (GAs) and SVMs, for feature weighting and parameter optimization to solve classification problems efficiently. We call it as the GA-SVM model. Our GA is designed with a special direction-based crossover operator. Experiments were conducted on several real-world datasets using the proposed model and Grid Search, a traditional method of searching optimal parameters. The results show that the GA-SVM model achieves significant improvement in the performance of classification on all the datasets in comparison with Grid Search. In terms of accuracy, out method is competitive with some state-of-the-art techniques for feature selection and feature weighting.
机译:支持向量机 (SVM) 被广泛认为是用于分类问题的高效监督学习模型。然而,SVM 分类器的成功取决于其参数的完美选择以及数据的结构。因此,本研究的目的是同时优化参数和特征权重,以增加支持向量机的强度。我们提出了一种新的混合模型,即遗传算法(GAs)和SVMs的结合,用于特征加权和参数优化,以有效地解决分类问题。我们称之为 GA-SVM 模型。我们的 GA 设计有特殊的基于方向的分频器算子。使用所提出的模型和网格搜索(一种搜索最佳参数的传统方法)在几个真实世界的数据集上进行了实验。结果表明,与网格搜索相比,GA-SVM模型在所有数据集上的分类性能均有显著提升。在精度方面,out方法在特征选择和特征加权方面与一些最先进的技术具有竞争力。

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