The neural and cognitive architecture for learning from a small sample
Neurons and Cognition
2018-10-08 v1
Abstract
Artificial intelligence algorithms are capable of fantastic exploits, yet they are still grossly inefficient compared with the brain's ability to learn from few exemplars or solve problems that have not been explicitly defined. What is the secret that the evolution of human intelligence has unlocked? Generalization is one answer, but there is more to it. The brain does not directly solve difficult problems, it is able to recast them into new and more tractable problems. Here we propose a model whereby higher cognitive functions profoundly interact with reinforcement learning to drastically reduce the degrees of freedom of the search space, simplifying complex problems and fostering more efficient learning.
Keywords
Cite
@article{arxiv.1810.02476,
title = {The neural and cognitive architecture for learning from a small sample},
author = {Aurelio Cortese and Benedetto De Martino and Mitsuo Kawato},
journal= {arXiv preprint arXiv:1810.02476},
year = {2018}
}