Abstract Feature selection is a fundamental pre‐processing step in machine learning that aims to reduce the dimensionality of a dataset by selecting the most effective features from the original features. This process is regarded as a combinatorial optimization problem, and the grey wolf optimizer (GWO), a novel meta‐heuristic algorithm, has gained popularity in feature selection due to its fast convergence speed and easy implementation. In this paper, an improved binary GWO algorithm incorporating a novel Population Adaptation strategy called PA‐BGWO is proposed. The PA‐BGWO takes into account the characteristics of the feature selection problem and designs three strategies. The proposed strategy includes an adaptive individual update proc...
In the last decade, data generated from different digital devices has posed a remarkable challenge f...
Optimization methods are considered as one of the highly developed areas in ArtificialIntelligence (...
The complexity of real-world problems motivated researchers to innovate efficient problem-solving te...
This paper proposes improvements to the binary grey-wolf optimizer (BGWO) to solve the feature selec...
Part 1: Machine LearningInternational audienceFeature selection is an important part of data mining,...
Feature selection (FS) is a pre-processing step that aims to eliminate the redundant and less-inform...
Selection of features is an effective method for minimizing the amount of data features in order to ...
Multi Objective Grey wolf Optimization is one a meta-heuristic technique. The MOGWO has recently gai...
Selection of features is an effective method for minimizing the amount of data features in order to ...
AbstractFeature sets are always dependent, redundant and noisy in almost all application domains. Th...
This paper introduces a new binary Grey Wolf Optimization (GWO) algorithm, which is one of the recen...
This research emphasizes mainly on classification, in which every instance in the dataset is classi...
Due to the high-dimensional characteristics of dataset, we propose a new method based on the Wolf Se...
Whale Optimization Algorithm (WOA) and Grey Wolf Optimizer (GWO) are well-perform metaheuristic algo...
Feature selection aims to reduce the dimensionality of a dataset by removing superfluous attributes....
In the last decade, data generated from different digital devices has posed a remarkable challenge f...
Optimization methods are considered as one of the highly developed areas in ArtificialIntelligence (...
The complexity of real-world problems motivated researchers to innovate efficient problem-solving te...
This paper proposes improvements to the binary grey-wolf optimizer (BGWO) to solve the feature selec...
Part 1: Machine LearningInternational audienceFeature selection is an important part of data mining,...
Feature selection (FS) is a pre-processing step that aims to eliminate the redundant and less-inform...
Selection of features is an effective method for minimizing the amount of data features in order to ...
Multi Objective Grey wolf Optimization is one a meta-heuristic technique. The MOGWO has recently gai...
Selection of features is an effective method for minimizing the amount of data features in order to ...
AbstractFeature sets are always dependent, redundant and noisy in almost all application domains. Th...
This paper introduces a new binary Grey Wolf Optimization (GWO) algorithm, which is one of the recen...
This research emphasizes mainly on classification, in which every instance in the dataset is classi...
Due to the high-dimensional characteristics of dataset, we propose a new method based on the Wolf Se...
Whale Optimization Algorithm (WOA) and Grey Wolf Optimizer (GWO) are well-perform metaheuristic algo...
Feature selection aims to reduce the dimensionality of a dataset by removing superfluous attributes....
In the last decade, data generated from different digital devices has posed a remarkable challenge f...
Optimization methods are considered as one of the highly developed areas in ArtificialIntelligence (...
The complexity of real-world problems motivated researchers to innovate efficient problem-solving te...