首页 | 本学科首页   官方微博 | 高级检索  
     

用于特征选择的乌鸦搜索算法的研究与改进
引用本文:廉杰,姚鑫,李占山.用于特征选择的乌鸦搜索算法的研究与改进[J].软件学报,2022,33(11):3903-3916.
作者姓名:廉杰  姚鑫  李占山
作者单位:吉林大学 计算机科学与技术学院, 吉林 长春 130012;符号计算与知识工程教育部重点实验室(吉林大学), 吉林 长春 130012
基金项目:国家自然科学基金(61802056);吉林省自然科学基金(20180101043JC);吉林省发展和改革委员会产业技术研究与开发项目(2019C053-9)
摘    要:特征选择是机器学习领域的热点问题.元启发式算法作为特征选择的重要方法之一,其性能会对问题求解产生直接影响.乌鸦搜索算法(CSA)是受乌鸦智能群体行为启发提出的一种元启发式算法,由于其具有简单、高效的特点,广大学者将其用来解决特征选择问题.然而,CSA易陷入局部最优解且收敛速度较慢,严重限制了算法求解能力.针对这一问题,采用logistic混沌映射、反向学习方法和差分进化这3种算子,结合乌鸦搜索算法,提出一种特征选择算法BICSA来选取最优特征子集.实验阶段,使用UCI数据库中的16个数据集来测试BICSA的性能.实验结果表明,与其他特征选择算法相比,BICSA求得的特征子集具有更高的分类准确率和较高的维度压缩能力,这说明BICSA在处理特征选择问题上具有很强的竞争力与足够的优越性.

关 键 词:乌鸦搜索算法  混沌映射  反向学习  差分进化  特征选择
收稿时间:2020/12/9 0:00:00
修稿时间:2021/1/11 0:00:00

Research and Improvements on Crow Search Algorithm for Feature Selection
LIAN Jie,YAO Xin,LI Zhan-Shan.Research and Improvements on Crow Search Algorithm for Feature Selection[J].Journal of Software,2022,33(11):3903-3916.
Authors:LIAN Jie  YAO Xin  LI Zhan-Shan
Affiliation:College of Computer Science and Technology, Jilin University, Changchun 130012, China;Key Laboratory of Symbolic Computation and Knowledge Engineering (Jilin University), Ministry of Education, Changchun 130012, China
Abstract:Feature selection is a hot issue in the field of machine learning. Meta-heuristic algorithm is one of the important methods of feature selection, and its performance will have a direct impact on problem solving. Crow search algorithm (CSA) is a kind of meta-heuristic algorithm inspired by the behavior of crow intelligent group. Because of its simple and efficient characteristics, it is used by many scholars to solve the feature selection problem. However, CSA is easy to fall into a local optimal solution and the convergence speed is slow, which severely limits the algorithm''s solving ability. In response to this problem, this study uses three operators, namely, logistic chaotic mapping, opposition-based learning method, and differential evolution, combined with crow search algorithm, proposes a feature selection algorithm BICSA to select the optimal feature subset. In the experimental phase, the performance of BICSA was demonstrated by using 16 data sets in the UCI database. Experimental results show that compared with other feature selection algorithms, the feature subset obtained by BICSA has higher classification accuracy and higher dimensional compression capabilities, indicating that BICSA has the ability to deal with feature selection problems with strong competitiveness and sufficient superiority.
Keywords:crow search algorithm  chaotic map  opposition-based learning  differential evolution  feature selection
点击此处可从《软件学报》浏览原始摘要信息
点击此处可从《软件学报》下载全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号