Research Area:  Metaheuristic Computing
Metaheuristic algorithms are implemented to solve optimization problems and have recently received significant research attention. Metaheuristic algorithms rely primarily on two properties, exploration, and exploitation. Traditional meta- heuristic algorithms use many weights (parameters) to balance these two properties to increase the chance of finding a better solution in limited cost and time. However, traditional algorithms have some problems. Exploration and exploitation are different abilities and restrict each other, therefore, traditional algorithms need many parameters and lots of costs to achieve the balance, and also need to adjust parameters for different optimization problems. Jaguar Algorithm (JA) has great abilities both in exploitation and exploration, is proposed to address these issues. First, JA attempts to find the optimal solution in the designated search area. It then uses history information to jump to a better area. JA can, therefore, determine the position of the global optimum. JA achieves strong exploitation and exploration with these features. Also, according to different problems, JA implements adaptive parameter adjustment. The self-analysis and experiment of this research demonstrate that each JA capability can have various positive effects, while the performance comparison demonstrates JAs superiority over traditional metaheuristic algorithms.
Keywords:  
Metaheuristic algorithms
jaguar algorithm (JA)
function optimization problem
dependency problem.
Author(s) Name:  Yao-Hsin Chou, Shu-Yu Kuo, Li-Sheng Yang, and Chia-Yun Yang
Journal name:  IEEE Access
Conferrence name:  
Publisher name:  IEEE
DOI:  10.1109/ACCESS.2018.2797059
Volume Information:  Volume: 6
Paper Link:   https://ieeexplore.ieee.org/abstract/document/8267218