2020
DOI: 10.1109/access.2020.3033757
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Dynamic Butterfly Optimization Algorithm for Feature Selection

Abstract: Feature selection represents an essential pre-processing step for a wide range of Machine Learning approaches. Datasets typically contain irrelevant features that may negatively affect the classifier performance. A feature selector can reduce the number of these features and maximise the classifier accuracy. This paper proposes a Dynamic Butterfly Optimization Algorithm (DBOA) as an improved variant to Butterfly Optimization Algorithm (BOA) for feature selection problems. BOA represents one of the most recentl… Show more

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Cited by 82 publications
(39 citation statements)
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“…3. like evolutionary algorithms (e.g., genetic algorithms (GA)) [21] and swarm intelligence (SI) techniques (e.g., particle swarm optimization (PSO)), that have been used to solve the FS problem [22], [23] physics based techniques(e.g Gravitational Search Algorithm (GSA)) SI techniques include unlimited algorithms such as Grey Wolf Optimizer (GWO) [24] , Water Cycle Algorithm (WCA) [25] , Whale Optimization Algorithm (WOA) [26], [27], Firefly Algorithm (FA) [28], Salp Swarm Algorithm (SSA) [29] , [30], [31], Emperor Penguin Colony [32] squirrel search algorithm [33], [34], slime mould algorithm (SMA ) [35] , Butterfly Optimization Algorithm [36], [37], Moth Flame Optimization [38], [39] and Marine Predators Algorithm (MPA), which is the most recent and newest SI algorithm [35].…”
Section: Figure 1: Feature Selection Frameworkmentioning
confidence: 99%
“…3. like evolutionary algorithms (e.g., genetic algorithms (GA)) [21] and swarm intelligence (SI) techniques (e.g., particle swarm optimization (PSO)), that have been used to solve the FS problem [22], [23] physics based techniques(e.g Gravitational Search Algorithm (GSA)) SI techniques include unlimited algorithms such as Grey Wolf Optimizer (GWO) [24] , Water Cycle Algorithm (WCA) [25] , Whale Optimization Algorithm (WOA) [26], [27], Firefly Algorithm (FA) [28], Salp Swarm Algorithm (SSA) [29] , [30], [31], Emperor Penguin Colony [32] squirrel search algorithm [33], [34], slime mould algorithm (SMA ) [35] , Butterfly Optimization Algorithm [36], [37], Moth Flame Optimization [38], [39] and Marine Predators Algorithm (MPA), which is the most recent and newest SI algorithm [35].…”
Section: Figure 1: Feature Selection Frameworkmentioning
confidence: 99%
“…Tubishat et al ( 2020 ) suggested dynamic butterfly optimization algorithm (DBOA) as an enhanced version for feature selection issues. Two significant changes have been made in the central BOA: introducing a local search algorithm based on mutation (LSAM) to prevent local optima problems and LSAM usage to increase the variety of BOA solutions.…”
Section: Related Workmentioning
confidence: 99%
“…A streamlined version of the algorithm called a dynamic BO algorithm (DBOA) was also used to perform feature selection problems [38]. The performance of the BOA surpasses that of the PSO.…”
Section: Generalized Bo Algorithmmentioning
confidence: 99%