Excogitating marine predators algorithm based on random opposition-based learning for feature selection

被引:8
|
作者
Balakrishnan, Kulanthaivel [1 ]
Dhanalakshmi, Ramasamy [1 ]
Khaire, Utkarsh Mahadeo [2 ]
机构
[1] Indian Inst Informat Technol Tiruchirappalli, Dept Comp Sci & Engn, Tiruchirappalli, India
[2] Indian Inst Informat Technol Dharwad, Dept Data Sci & Intelligent Syst, Dharwad 580009, Karnataka, India
来源
关键词
feature selection; marine predators algorithm; meta-heuristic optimization; random opposition-based learning; OPTIMIZATION ALGORITHM; GLOBAL OPTIMIZATION; PSO;
D O I
10.1002/cpe.6630
中图分类号
TP31 [计算机软件];
学科分类号
081202 ; 0835 ;
摘要
Obtaining precise information from a high-dimensional dataset is one of the most difficult tasks as datasets contain more features and fewer samples. The high-dimensionality of the dataset reduces predictive capability and increases the computational complexity of the analytical model. The widespread employment of meta-heuristic methods to handle the challenge of high-dimensional datasets has been exceptional in recent years. The marine predators algorithm (MPA) is a recently developed meta-heuristic algorithm based on the "survival-of-the-fittest" notion. This research critique overcomes the drawbacks of the existing MPA and proposes a feature selection model using random opposition-based learning (ROBL). The searching for the optimum solution in a single direction of the traditional MPA reduces its performance. The incorporation of ROBL in the MPA enhances its ability to reconnoiter bigger search space. The proposed algorithm generates a new population based on the initial and random opposite population. The performance of ROBL-MPA is inspected on six high-dimensional microarray datasets. The results of the proposed ROBL-MPA are compared to traditional MPA and opposition based MPA (OBL-MPA). The proposed ROBL-MPA outperforms traditional MPA based on several benchmark performance analysis tests.
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页数:16
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