Journal Article10.2991/IJCIS.D.210203.008
Integrating Grasshopper Optimization Algorithm with Local Search for Solving Data Clustering Problems
M. A. El-Shorbagy,A. Y. Ayoub +1 more
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TL;DR: This hybrid approach used one of the swarm intelligence algorithms: grasshopper optimization algorithm (GOA) due to its robustness and effectiveness in solving optimization problems and a local search strategy is applied to enhance the solution quality and access to optimal data clustering.
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Abstract: This paper proposes a hybrid approach for solving data clustering problems. This hybrid approach used one of the swarm intelligence algorithms (SIAs): grasshopper optimization algorithm (GOA) due to its robustness and effectiveness in solving optimization problems. In addition, a local search (LS) strategy is applied to enhance the solution quality and access to optimal data clustering. The proposed algorithm is divided into two stages, the first of which aims to use GOA to prevent getting trapped in local minima and to find an approximate solution. While the second stage aims by LS to increase LS performance and obtain the best optimal solution. In other words, the proposed algorithm combines the exploitation capability of GOA and the discovery capability of LS, and integrates the merits of both GOA and LS. In addition, 7 well-known datasets that commonly used in several studies are used to validate the proposed technique. The results of the proposed methodology are compared to previous studies; where statistical analysis, for the various algorithms, indicated the superiority of the proposed methodology over other algorithms and its ability to solve this type of problem.
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Citations
A hybrid genetic-firefly algorithm for engineering design problems
TL;DR: Zhang et al. as discussed by the authors proposed H-GA-FA, a hybrid algorithm that combines two metaheuristic algorithms, the GA and the FA, to overcome the flaws of the FA and combine the benefits of both algorithms to solve engineering design problems (EDPs).
A learning automata-based hybrid MPA and JS algorithm for numerical optimization problems and its application on data clustering
TL;DR: In this article, a learning-automata-based hybrid optimization algorithm is presented for global optimization problems, where the artificial Jellyfish search algorithm (JS) and Marine Predator Algorithm (MPA) are rectified to reduce their computational complexity while retaining their strengths.
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Novel variants of grasshopper optimization algorithm to solve numerical problems and demand side management in smart grids
TL;DR: In this paper , two strategies have been integrated into GOA: the grouping mechanism of non-linear parameters and the mutation mechanism, which can update the grasshoppers' positions within a limited local area.
A learning automata-based hybrid MPA and JS algorithm for numerical optimization problems and its application on data clustering
01 Jan 2022
TL;DR: In this article , a learning-automata-based hybrid optimization algorithm is presented for global optimization problems, where the artificial Jellyfish search algorithm (JS) and Marine Predator Algorithm (MPA) are rectified to reduce their computational complexity while retaining their strengths.
12
References
Data clustering: a review
TL;DR: An overview of pattern clustering methods from a statistical pattern recognition perspective is presented, with a goal of providing useful advice and references to fundamental concepts accessible to the broad community of clustering practitioners.
Survey of clustering algorithms
Rui Xu,Donald C. Wunsch +1 more
TL;DR: Clustering algorithms for data sets appearing in statistics, computer science, and machine learning are surveyed, and their applications in some benchmark data sets, the traveling salesman problem, and bioinformatics, a new field attracting intensive efforts are illustrated.
`` Direct Search'' Solution of Numerical and Statistical Problems
Robert Hooke,T. A. Jeeves +1 more
TL;DR: The phrase "direct search" is used to describe sequential examination of trial solutions involving comparison of each trial solution with the "best" obtained up to that time together with a strategy for determining (as a function of earlier results) what the next trial solution will be.
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Grasshopper Optimisation Algorithm
TL;DR: The proposed grasshopper optimisation algorithm is able to provide superior results compared to well-known and recent algorithms in the literature and the results of the real applications prove the merits of GOA in solving real problems with unknown search spaces.
2.4K
Cluster Analysis: Everitt/Cluster Analysis
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- 07 Jan 2011
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