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Meta-learning as a bridge between neural networks and symbolic Bayesian models.

R Thomas McCoyThomas L Griffiths
Published in: The Behavioral and brain sciences (2024)
Meta-learning is even more broadly relevant to the study of inductive biases than Binz et al. suggest: Its implications go beyond the extensions to rational analysis that they discuss. One noteworthy example is that meta-learning can act as a bridge between the vector representations of neural networks and the symbolic hypothesis spaces used in many Bayesian models.
Keyphrases
  • neural network