ELM结合混合特征选择进行分类

Weifeng Li, Yuliang Hou, Haiquan Wang, Jianhua Wei
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引用次数: 0

摘要

数据分类的目的是根据新数据对象的属性将其分配到正确的类别。但是数据的复杂性、高维特征空间和低质量的特征选择成为数据分类过程中的主要问题。为了提高分类性能和降低数据维数,有效的特征选择变得越来越重要。本文采用改进的F -score和启发式搜索策略作为特征选择方法,利用极限学习机(ELM)对选择的特征子集进行评估,实现有效的特征选择。实验中使用五重交叉验证,实验数据集取自UCI机器学习存储库。实验结果表明,基于改进F分数和启发式搜索的特征选择方法不仅使分类器输入的特征更少,而且使分类器具有更高的分类精度、更少的耗时和良好的泛化性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ELM combined with hybrid feature selection for classification
The purpose of data classification is to assign new data objects to a correct category based on their attributes. But the complexity of data, high dimensional feature space and low quality of feature selection become the main problem for data classification process. In order to improve the classification performance and reduce the data dimension, effective feature selection is becoming increasingly important. In this paper, an improved F -score and heuristic search strategy are used as feature selection methods, extreme learning machine (ELM) is used to evaluate the selected feature subsets and used to achieve effective feature selection. Five-fold cross-validation is used in experiments, and experimental data sets are taken from the UCI machine learning repository. The experimental results show that the feature selection method based on improved F -score and heuristic search not only make the input of classifier have fewer features, but also lead the classifier to have a higher classification accuracy, less time consuming, and a good generalization performance.
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