A comprehensive survey on recent metaheuristics for feature selection
Feature selection has become an indispensable machine learning process for data
preprocessing due to the ever-increasing sizes in actual data. There have been many …
preprocessing due to the ever-increasing sizes in actual data. There have been many …
Metaheuristic algorithms on feature selection: A survey of one decade of research (2009-2019)
Feature selection is a critical and prominent task in machine learning. To reduce the
dimension of the feature set while maintaining the accuracy of the performance is the main …
dimension of the feature set while maintaining the accuracy of the performance is the main …
Optimization method for forecasting confirmed cases of COVID-19 in China
MAA Al-Qaness, AA Ewees, H Fan… - Journal of clinical …, 2020 - mdpi.com
In December 2019, a novel coronavirus, called COVID-19, was discovered in Wuhan, China,
and has spread to different cities in China as well as to 24 other countries. The number of …
and has spread to different cities in China as well as to 24 other countries. The number of …
An efficient binary salp swarm algorithm with crossover scheme for feature selection problems
Searching for the (near) optimal subset of features is a challenging problem in the process of
feature selection (FS). In the literature, Swarm Intelligence (SI) algorithms show superior …
feature selection (FS). In the literature, Swarm Intelligence (SI) algorithms show superior …
Metaheuristic algorithms: A comprehensive review
M Abdel-Basset, L Abdel-Fatah, AK Sangaiah - … big data on the cloud with …, 2018 - Elsevier
Metaheuristic algorithms are computational intelligence paradigms especially used for
sophisticated solving optimization problems. This chapter aims to review of all …
sophisticated solving optimization problems. This chapter aims to review of all …
Advances in nature-inspired metaheuristic optimization for feature selection problem: A comprehensive survey
The main objective of feature selection is to improve learning performance by selecting
concise and informative feature subsets, which presents a challenging task for machine …
concise and informative feature subsets, which presents a challenging task for machine …
A new quadratic binary harris hawk optimization for feature selection
Harris hawk optimization (HHO) is one of the recently proposed metaheuristic algorithms
that has proven to be work more effectively in several challenging optimization tasks …
that has proven to be work more effectively in several challenging optimization tasks …
Boolean Particle Swarm Optimization with various Evolutionary Population Dynamics approaches for feature selection problems
In the feature selection process, reaching the best subset of features is considered a difficult
task. To deal with the complexity associated with this problem, a sophisticated and robust …
task. To deal with the complexity associated with this problem, a sophisticated and robust …
Gradient-based optimizer improved by Slime Mould Algorithm for global optimization and feature selection for diverse computation problems
Optimization algorithms have shown significant advantages in solving diverse several real-
world problems, especially where are limitations in computations and hardware …
world problems, especially where are limitations in computations and hardware …
S-shaped binary whale optimization algorithm for feature selection
AG Hussien, AE Hassanien, EH Houssein… - Recent trends in signal …, 2019 - Springer
Whale optimization algorithm is one of the recent nature-inspired optimization technique
based on the behavior of bubble-net hunting strategy. In this paper, a novel binary version of …
based on the behavior of bubble-net hunting strategy. In this paper, a novel binary version of …