220
v1v2v3 (latest)

Early years of Biased Random-Key Genetic Algorithms: A systematic review

Journal of Global Optimization (JGO), 2024
Main:21 Pages
10 Figures
Bibliography:11 Pages
6 Tables
Abstract

This paper presents a systematic literature review and bibliometric analysis focusing on Biased Random-Key Genetic Algorithms (BRKGA). BRKGA is a metaheuristic framework that uses random-key-based chromosomes with biased, uniform, and elitist mating strategies alongside a genetic algorithm. This review encompasses around~250 papers, covering a diverse array of applications ranging from classical combinatorial optimization problems to real-world industrial scenarios, and even non-traditional applications like hyperparameter tuning in machine learning and scenario generation for two-stage problems. In summary, this study offers a comprehensive examination of the BRKGA metaheuristic and its various applications, shedding light on key areas for future research.

View on arXiv
Comments on this paper