作者
Rehab Ali Ibrahim, Ahmed A Ewees, Diego Oliva, Mohamed Abd Elaziz, Songfeng Lu
发表日期
2019/8/1
期刊
Journal of Ambient Intelligence and Humanized Computing
卷号
10
页码范围
3155-3169
出版商
Springer Berlin Heidelberg
简介
Feature selection (FS) is a machine learning process commonly used to reduce the high dimensionality problems of datasets. This task permits to extract the most representative information of high sized pools of data, reducing the computational effort in other tasks as classification. This article presents a hybrid optimization method for the FS problem; it combines the slap swarm algorithm (SSA) with the particle swarm optimization. The hybridization between both approaches creates an algorithm called SSAPSO, in which the efficacy of the exploration and the exploitation steps is improved. To verify the performance of the proposed algorithm, it is tested over two experimental series, in the first one, it is compared with other similar approaches using benchmark functions. Meanwhile, in the second set of experiments, the SSAPSO is used to determine the best set of features using different UCI datasets. Where …
引用总数
201820192020202120222023202411039781087332
学术搜索中的文章
RA Ibrahim, AA Ewees, D Oliva, M Abd Elaziz, S Lu - Journal of Ambient Intelligence and Humanized …, 2019