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What is the simplest model that can account for high-fidelity imitation?

Published online by Cambridge University Press:  10 November 2022

Joel Z. Leibo
Affiliation:
Raphael Köster
Affiliation:
Alexander Sasha Vezhnevets
Affiliation:
Edgar A. Duénez-Guzmán
Affiliation:
John P. Agapiou
Affiliation:
Peter Sunehag
Affiliation:

Abstract

What inductive biases must be incorporated into multi-agent artificial intelligence models to get them to capture high-fidelity imitation? We think very little is needed. In the right environments, both instrumental- and ritual-stance imitation can emerge from generic learning mechanisms operating on non-deliberative decision architectures. In this view, imitation emerges from trial-and-error learning and does not require explicit deliberation.

Type
Open Peer Commentary
Copyright
Copyright © The Author(s), 2022. Published by Cambridge University Press

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