| Literature DB >> 35849643 |
William La Cava1, Jason H Moore1.
Abstract
Multidimensional genetic programming represents candidate solutions as sets of programs, and thereby provides an interesting framework for exploiting building block identification. Towards this goal, we investigate the use of machine learning as a way to bias which components of programs are promoted, and propose two semantic operators to choose where useful building blocks are placed during crossover. A forward stagewise crossover operator we propose leads to significant improvements on a set of regression problems, and produces state-of-the-art results in a large benchmark study. We discuss this architecture and others in terms of their propensity for allowing heuristic search to utilize information during the evolutionary process. Finally, we look at the collinearity and complexity of the data representations that result from these architectures, with a view towards disentangling factors of variation in application.Entities:
Keywords: feature construction; regression; representation learning; variation
Year: 2019 PMID: 35849643 PMCID: PMC9285097 DOI: 10.1145/3321707.3321776
Source DB: PubMed Journal: Genet Evol Comput Conf