Phylogenetically Acquired Representations and Evolutionary Algorithms.

Conference object English OPEN
Wozniak , Adrianna;
  • Publisher: HAL CCSD
  • Subject: symbol grounding problem | modes of inheritance | evolutionary algorithms | [ SDV.NEU.SC ] Life Sciences [q-bio]/Neurons and Cognition [q-bio.NC]/Cognitive Sciences | evolutionary theory | artificial intelligence

First, we explain why Genetic Algorithms (GAs), inspired by the Modern Synthesis, do not accurately model biological evolution, being rather an artificial version of artificial, rather than natural selection. Being focused on optimisation, we propose two improvements of... View more
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