This work investigates the effects of the periodization of local and global multi-objective search algorithms. We rely on a model for periodization and define a multi-objective evolutionary algorithm adopting concepts from Evolutionary Strategies and NSGAII. We show that our method excels for the evolution of digital circuits on the Cartesian Genetic Programming model as well as on some standard benchmarks such as the ZDT6, especially when periodized with standard multi-objective genetic algorithms.
CITATION STYLE
Kaufmann, P., & Platzner, M. (2018). Combining Local and Global Search: A Multi-objective Evolutionary Algorithm for Cartesian Genetic Programming (pp. 175–194). https://doi.org/10.1007/978-3-319-67997-6_8
Mendeley helps you to discover research relevant for your work.