2017
DOI: 10.1016/j.biosystems.2017.07.010
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A global optimization algorithm inspired in the behavior of selfish herds

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Cited by 144 publications
(46 citation statements)
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“…The social behaviour of some animals preferably foraging in herds during an attack by predators to increase the survival chances is merely selfish with other conspecifics during aggregation, and this was mathematically formulated as SHO algorithm, proposed by Fausto et al 18 The detail theory, procedures, and codes for the algorithm are reported in Fausto et al 18 . The concept of selfish herd theory states that the animals within a herd try to shrink their predation threat by placing other conspecifics amongst themselves and predators as risk increases towards the periphery, but reduces towards the centre of aggregation.…”
Section: Quasi-oppositional Selfish Herd Optimisationmentioning
confidence: 99%
“…The social behaviour of some animals preferably foraging in herds during an attack by predators to increase the survival chances is merely selfish with other conspecifics during aggregation, and this was mathematically formulated as SHO algorithm, proposed by Fausto et al 18 The detail theory, procedures, and codes for the algorithm are reported in Fausto et al 18 . The concept of selfish herd theory states that the animals within a herd try to shrink their predation threat by placing other conspecifics amongst themselves and predators as risk increases towards the periphery, but reduces towards the centre of aggregation.…”
Section: Quasi-oppositional Selfish Herd Optimisationmentioning
confidence: 99%
“…erefore, in current research, the HaeDE performance is compared to those of the aeDE [17], particle swarm optimization (PSO) [11], Selfish Herd Optimizer (SHO) [9], Salp Swarm Algorithm (SSA) [14], and Dragonfly algorithm (DA) [13] using 32/50 functions that are multimodal. For each benchmark function, all methods are run 30 independent times with the same initial population in each time.…”
Section: Experiments On Benchmark Functionsmentioning
confidence: 99%
“…Population-based algorithms including evolutionary algorithms and swarm-based algorithms are types of global searching techniques. Evolutionary algorithms [1][2][3][4][5][6][7][8] are inspired by biological processes that allow population to adapt to their surroundings: genetic inheritance and survival of the best chromosomes; swarm-based algorithms [9][10][11][12][13][14][15][16] that focus on the social behaviors of insects and animals can solve the optimal problem as well. Among popular evolutionary algorithms, the differential evolution (DE) algorithm firstly introduced by Storn and Price [8] has been used in many practical problems and has demonstrated good convergence properties.…”
Section: Introductionmentioning
confidence: 99%
“…This algorithm is used in some applications such as solving global optimization [13] and structural damage identification [14]. Selfish herd optimizer (SHO) [15] is another meta-heuristic that emulates selfish herd behavior. The SHO is used to solve global optimization problems [15], and there is another version of SHO that depends on the opposite-based learning method and that applied this algorithm to an optimization function [16].…”
Section: Introductionmentioning
confidence: 99%