作者
Borja Seijo-Pardo, Iago Porto-Díaz, Verónica Bolón-Canedo, Amparo Alonso-Betanzos
发表日期
2017/2/15
期刊
Knowledge-Based Systems
卷号
118
页码范围
124-139
出版商
Elsevier
简介
In the last decade, ensemble learning has become a prolific discipline in pattern recognition, based on the assumption that the combination of the output of several models obtains better results than the output of any individual model. On the basis that the same principle can be applied to feature selection, we describe two approaches: (i) homogeneous, i.e., using the same feature selection method with different training data and distributing the dataset over several nodes; and (ii) heterogeneous, i.e., using different feature selection methods with the same training data. Both approaches are based on combining rankings of features that contain all the ordered features. The results of the base selectors are combined using different combination methods, also called aggregators, and a practical subset is selected according to several different threshold values (traditional values based on fixed percentages, and more …
引用总数
201720182019202020212022202320241331243158525930
学术搜索中的文章
B Seijo-Pardo, I Porto-Díaz, V Bolón-Canedo… - Knowledge-Based Systems, 2017