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Binz et al. highlight the potential of meta-learning to greatly enhance the flexibility of AI algorithms, as well as to approximate human behavior more accurately than traditional learning methods. We wish to emphasize a basic problem that lies underneath these two objectives, and in turn suggest another perspective of the required notion of "meta" in meta-learning: knowing what to learn.

Original publication

DOI

10.1017/S0140525X24000268

Type

Journal article

Journal

Behav Brain Sci

Publication Date

23/09/2024

Volume

47

Keywords

Humans, Learning, Artificial Intelligence, Algorithms