Research Area:  Metaheuristic Computing
In the past decades, the rapid growth of computer and database technologies has led to the rapid growth of large-scale datasets. On the other hand, data mining applications with high dimensional datasets that require high speed and accuracy are rapidly increasing. An important issue with these applications is the curse of dimensionality, where the number of features is much higher than the number of patterns. One of the dimensionality reduction approaches is feature selection that can increase the accuracy of the data mining task and reduce its computational complexity. The feature selection method aims at selecting a subset of features with the lowest inner similarity and highest relevancy to the target class. It reduces the dimensionality of the data by eliminating irrelevant, redundant, or noisy data. In this paper, a comparative analysis of different feature selection methods is presented, and a general categorization of these methods is performed. Moreover, in this paper, state-of-the-art swarm intelligence is studied, and the recent feature selection methods based on these algorithms are reviewed. Furthermore, the strengths and weaknesses of the different studied swarm intelligence-based feature selection methods are evaluated.
Keywords:  
swarm intelligence
feature selection methods
Meta-Heuristic
Author(s) Name:  Mehrdad Rostami, Kamal Berahmand, Elahe Nasiri, Saman Forouzandeh
Journal name:  Engineering Applications of Artificial Intelligence
Conferrence name:  
Publisher name:  Elsevier
DOI:  10.1016/j.engappai.2021.104210
Volume Information:  Volume 100, April 2021, 104210
Paper Link:   https://www.sciencedirect.com/science/article/abs/pii/S0952197621000579