A comprehensive comparison of accuracy-based fitness functions of metaheuristics for feature selection

被引:0
|
作者
Ahmet Cevahir Cinar
机构
[1] Selcuk University,Department of Computer Engineering, Faculty of Technology
来源
Soft Computing | 2023年 / 27卷
关键词
Binary optimization; Feature selection; Metaheuristic algorithm; Fitness function;
D O I
暂无
中图分类号
学科分类号
摘要
The feature selection (FS) is a binary optimization problem in the discrete optimization problem category. Maximizing the accuracy by using fewer features is the main aim of FS. Metaheuristic algorithms are widely used for FS in literature. Redundant and irrelevant features are selected/unselected by a binary metaheuristic optimization algorithm for FS. Search in a metaheuristic optimization algorithm is directed with a fitness function. The type and landscape of the search space affect the success of the algorithm. Generally, accuracy-based fitness functions of metaheuristic algorithms are used for FS. In this work, eleven existing and six novel fitness functions are analyzed on eleven various datasets with a novel binary threshold Lévy flight distribution (BTLFD) algorithm. The large datasets (Yale, ORL, and COIL20) have 1024 features. The medium datasets (SpectEW, BreastEW, Ionosphere, and SonarEW) has 22–60 features. The small datasets (Tic-tac-toe, WineEW, Zoo, and Lymphography) have 9–18 features. K-nearest neighbor is used as a classifier with five-fold cross-validation and the experimental results showed that three rarely used fitness functions produced more accurate solutions. In the comparisons, BTFLD outperformed 8 state-of-the-art metaheuristic algorithms on 21 datasets for FS.
引用
收藏
页码:8931 / 8958
页数:27
相关论文
共 50 条
  • [31] Individual Optimal Feature Selection Based on Comprehensive Evaluation Indexs
    Zhang, Feng-Zhen
    Li, Gui-Juan
    Peng, Yuan
    Mu, Lin
    Lin, Zheng-Qing
    INTELLIGENT COMPUTING THEORIES AND APPLICATIONS, ICIC 2012, 2012, 7390 : 569 - 576
  • [32] Ranked modelling with feature selection based on the CPL criterion functions
    Bobrowski, L
    MACHINE LEARNING AND DATA MINING IN PATTERN RECOGNITION, PROCEEDINGS, 2005, 3587 : 218 - 227
  • [33] Integrative approaches to the prediction of protein functions based on the feature selection
    Ko, Seokha
    Lee, Hyunju
    BMC BIOINFORMATICS, 2009, 10
  • [34] Integrative approaches to the prediction of protein functions based on the feature selection
    Seokha Ko
    Hyunju Lee
    BMC Bioinformatics, 10
  • [35] Comparison of Feature Selection Approaches based on the SVM Classification
    Li, F. C.
    Chen, F. L.
    Wang, G. E.
    IEEM: 2008 INTERNATIONAL CONFERENCE ON INDUSTRIAL ENGINEERING AND ENGINEERING MANAGEMENT, VOLS 1-3, 2008, : 400 - +
  • [36] Feature Selection Method with Proportionate Fitness Based Binary Particle Swarm Optimization
    Zhou, Zhe
    Liu, Xing
    Li, Ping
    Shang, Lin
    SIMULATED EVOLUTION AND LEARNING (SEAL 2014), 2014, 8886 : 582 - 592
  • [37] A comprehensive survey of feature selection techniques based on whale optimization algorithm
    Mohammad Amiriebrahimabadi
    Najme Mansouri
    Multimedia Tools and Applications, 2024, 83 : 47775 - 47846
  • [38] A comprehensive survey of feature selection techniques based on whale optimization algorithm
    Amiriebrahimabadi, Mohammad
    Mansouri, Najme
    MULTIMEDIA TOOLS AND APPLICATIONS, 2023, 83 (16) : 47775 - 47846
  • [39] Comprehensive Criteria-Based Generalized Steganalysis Feature Selection Method
    Wang, Yihao
    Ma, Yuanyuan
    Jin, Ruixia
    Liu, Pei
    Ruan, Ning
    IEEE ACCESS, 2020, 8 : 154418 - 154435
  • [40] A Comprehensive Empirical Comparison of Modern Supervised Classification and Feature Selection Methods for Text Categorization
    Aphinyanaphongs, Yindalon
    Fu, Lawrence D.
    Li, Zhiguo
    Peskin, Eric R.
    Efstathiadis, Efstratios
    Aliferis, Constantin F.
    Statnikov, Alexander
    JOURNAL OF THE ASSOCIATION FOR INFORMATION SCIENCE AND TECHNOLOGY, 2014, 65 (10) : 1964 - 1987