2021
DOI: 10.3233/ida-195056
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A novel krill herd algorithm with orthogonality and its application to data clustering

Abstract: Krill herd algorithm (KHA) is an emerging nature-inspired approach that has been successfully applied to optimization. However, KHA may get stuck into local optima owing to its poor exploitation. In this paper, the orthogonal learning (OL) mechanism is incorporated to enhance the performance of KHA for the first time, then an improved method named orthogonal krill herd algorithm (OKHA) is obtained. Compared with the existing hybridizations of KHA, OKHA could discover more useful information from historical dat… Show more

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Cited by 2 publications
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“…For example, CSO, GOA, and DTA suffer from slow convergence with being stuck in the local optimum [69,70]. The performance of KHA, CHIO, and Aqu gets disturbed by their poor exploitation search mechanism which prevents the algorithm from reaching the global optimum solution [71,72]. Whereas, GAs are viewed as extremely slow, expensive to implement, and time-consuming [73].…”
Section: Metaheuristics For Feature Selection In Medical Sciencesmentioning
confidence: 99%
“…For example, CSO, GOA, and DTA suffer from slow convergence with being stuck in the local optimum [69,70]. The performance of KHA, CHIO, and Aqu gets disturbed by their poor exploitation search mechanism which prevents the algorithm from reaching the global optimum solution [71,72]. Whereas, GAs are viewed as extremely slow, expensive to implement, and time-consuming [73].…”
Section: Metaheuristics For Feature Selection In Medical Sciencesmentioning
confidence: 99%