Publicação

Semantic-based recombination and mutation in cellular-inspired genetic programming

Ver documento

Detalhes bibliográficos
Resumo:The incorporation of a Cellular Automata (CA)-like structure into the population of Evolutionary Algorithms (EAs) has been shown to enhance solution quality. However, research on CA-like structures in the context of Genetic Programming (GP) remains limited. This work examines the impact of introducing such structures in Geometric Semantic variants of GP, specifically focusing on the well-established Geometric Semantic GP (GSGP) and the recently proposed SLIM-GSGP, which prioritizes generating smaller and more interpretable individuals. Furthermore, we analyze how cellular structures influence the effectiveness of semantic-based recombination and mutation in both GSGP and SLIM-GSGP. To this end, we conduct a comprehensive evaluation of these genetic operators, examining their effects both individually and in combination. We provide insights into how CA-like structures and semantic genetic operators influence both the quality and size of solutions in GSGP and SLIM-GSGP, offering a clear understanding of the trade-offs associated with these approaches.
Autores principais:Rovito, Luigi
Outros Autores:Bonin, Lorenzo; Farinati, Davide; Vanneschi, Leonardo; Manzoni, Luca; De Lorenzo, Andrea; Pietropolli, Gloria
Assunto:Evolutionary algorithms Genetic programming Geometric semantic genetic programming Cellular automata Symbolic regression SLIM geometric semantic genetic programming Software Theoretical Computer Science Hardware and Architecture Computer Science Applications
Ano:2025
País:Portugal
Tipo de documento:artigo
Tipo de acesso:acesso aberto
Instituição associada:Universidade Nova de Lisboa
Idioma:inglês
Origem:Repositório Institucional da UNL
Descrição
Resumo:The incorporation of a Cellular Automata (CA)-like structure into the population of Evolutionary Algorithms (EAs) has been shown to enhance solution quality. However, research on CA-like structures in the context of Genetic Programming (GP) remains limited. This work examines the impact of introducing such structures in Geometric Semantic variants of GP, specifically focusing on the well-established Geometric Semantic GP (GSGP) and the recently proposed SLIM-GSGP, which prioritizes generating smaller and more interpretable individuals. Furthermore, we analyze how cellular structures influence the effectiveness of semantic-based recombination and mutation in both GSGP and SLIM-GSGP. To this end, we conduct a comprehensive evaluation of these genetic operators, examining their effects both individually and in combination. We provide insights into how CA-like structures and semantic genetic operators influence both the quality and size of solutions in GSGP and SLIM-GSGP, offering a clear understanding of the trade-offs associated with these approaches.