Artificial Ecosystem-Based Optimization with Dwarf Mongoose Optimization for Feature Selection and Global Optimization Problems

被引:0
作者
Ibrahim Al-Shourbaji
Pramod Kachare
Sajid Fadlelseed
Abdoh Jabbari
Abdelazim G. Hussien
Faisal Al-Saqqar
Laith Abualigah
Abdalla Alameen
机构
[1] Jazan University,Department of Computer and Network Engineering
[2] University of Hertfordshire,Department of Computer Science
[3] Ramrao Adik Institute of Technology,Department of Electronics & Telecomm
[4] Linköping University,Department of Computer and Information Science
[5] Fayoum University,Faculty of Science
[6] Al al-Bayt University,Computer Science Department, Prince Hussein Bin Abdullah Faculty for Information Technology
[7] Sunway University Malaysia,School of Engineering and Technology
[8] Hourani Center for Applied Scientific Research,Faculty of Information Technology
[9] Al-Ahliyya Amman University,School of Computer Sciences
[10] Middle East University,Department of Computer Science, College of Arts and Sciences
[11] Applied Science Research Center,undefined
[12] Applied Science Private University,undefined
[13] Universiti Sains Malaysia,undefined
[14] Prince Sattam Bin Abdulaziz University,undefined
来源
International Journal of Computational Intelligence Systems | / 16卷
关键词
Feature selection; Machine learning; Metaheuristic algorithms; Artificial ecosystem-based optimization; Dwarf mongoose optimization;
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摘要
Meta-Heuristic (MH) algorithms have recently proven successful in a broad range of applications because of their strong capabilities in picking the optimal features and removing redundant and irrelevant features. Artificial Ecosystem-based Optimization (AEO) shows extraordinary ability in the exploration stage and poor exploitation because of its stochastic nature. Dwarf Mongoose Optimization Algorithm (DMOA) is a recent MH algorithm showing a high exploitation capability. This paper proposes AEO-DMOA Feature Selection (FS) by integrating AEO and DMOA to develop an efficient FS algorithm with a better equilibrium between exploration and exploitation. The performance of the AEO-DMOA is investigated on seven datasets from different domains and a collection of twenty-eight global optimization functions, eighteen CEC2017, and ten CEC2019 benchmark functions. Comparative study and statistical analysis demonstrate that AEO-DMOA gives competitive results and is statistically significant compared to other popular MH approaches. The benchmark function results also indicate enhanced performance in high-dimensional search space.
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