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Is coding a relevant metaphor for building AI?

Published online by Cambridge University Press:  28 November 2019

Adam Santoro
Affiliation:
Felix Hill
Affiliation:
David Barrett
Affiliation:
David Raposo
Affiliation:
Matt Botvinick
Affiliation:
Timothy Lillicrap
Affiliation:

Abstract

Brette contends that the neural coding metaphor is an invalid basis for theories of what the brain does. Here, we argue that it is an insufficient guide for building an artificial intelligence that learns to accomplish short- and long-term goals in a complex, changing environment.

Type
Open Peer Commentary
Copyright
Copyright © Cambridge University Press 2019

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Footnotes

1.

AS and FH contributed equally to this work.

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