Challenges of meta-learning and rational analysis in large worlds.
Margherita CalderanAntonino VisalliPublished in: The Behavioral and brain sciences (2024)
We challenge Binz et al.'s claim of meta-learned model superiority over Bayesian inference for large world problems. While comparing Bayesian priors to model-training decisions, we question meta-learning feature exclusivity. We assert no special justification for rational Bayesian solutions to large world problems, advocating exploring diverse theoretical frameworks beyond rational analysis of cognition for research advancement.