Geometric semantic GP with linear scaling: Darwinian versus Lamarckian evolution

Giorgia Nadizar, Berfin Sakallioglu, Fraser Garrow, Sara Silva, Leonardo Vanneschi

Research output: Contribution to journalArticlepeer-review

5 Citations (Scopus)
14 Downloads (Pure)

Abstract

Geometric Semantic Genetic Programming (GSGP) has shown notable success in symbolic regression with the introduction of Linear Scaling (LS). This achievement stems from the synergy of the geometric semantic genetic operators of GSGP with the scaling of the individuals for computing their fitness, which favours programs with a promising behaviour. However, the initial combination of GSGP and LS (GSGP-LS) underutilised the potential of LS, scaling individuals only for fitness evaluation, neglecting to incorporate improvements into their genetic material. In this paper we propose an advancement, GSGP with Lamarckian LS (GSGP-LLS), wherein we update the individuals in the population with their scaling coefficients in a Lamarckian fashion, i.e., by inheritance of acquired traits. We assess GSGP-LS and GSGP-LLS against standard GSGP for the task of symbolic regression on five hand-tailored benchmarks and six real-life problems. On the former ones, GSGP-LS and GSGP-LLS both consistently improve GSGP, though with no clear global superiority between them. On the real-world problems, instead, GSGP-LLS steadily outperforms GSGP-LS, achieving faster convergence and superior final performance. Notably, even in cases where LS induces overfitting on challenging problems, GSGP-LLS surpasses GSGP-LS, due to its slower and more localised optimisation steps.
Original languageEnglish
Article number17
Pages (from-to)1-24
Number of pages24
JournalGenetic Programming And Evolvable Machines
Volume25
Issue number2
Early online date1 Jun 2024
DOIs
Publication statusPublished - Dec 2024

Keywords

  • Symbolic regression
  • Geometric semantic genetic programming
  • Linear scaling
  • Lamarckian evolution
  • Genetic programming

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