Learning adaptive information from others results in better regulation of task performance, especially by gaining fitness benefits and in avoiding some of the costs associated with asocial, trial-and-error learning.
(2/10)
Various categories of #sociallearning have been proposed, as well as social learning strategies that refine such categories and make them contextually appropriate.
(3/10)
Moreover, recent efforts in #computationalsocialneuroscience have paved the way for a naturalization of social interactions, showing that the connectome seems to facilitate resonance between brains.
(4/10)
So, how can we leverage social learning to make AI agents more robust and flexible? Three ideas:
(5/10)
1 Neuroscientific theories of cognitive architecture can enhance #biologicalplausibility and help us understand how we could bridge individual and social theories of intelligence (6/10)
2 Intelligence occurs in time as opposed to over time, and this is naturally incorporated by the powerful framework offered by #dynamics.
(7/10)
3 #Socialembodiment has been demonstrated to provide social interactions between virtual agents and humans with a more sophisticated array of communicative signals.
(8/10)
We believe these research axes will contribute to creating agents that not only do have human-like OOD skills, but are also able to exhibit such skills in extremely complex and realistic environments.
(9/10)
Many thanks to my brilliant coauthor and supervisor @introspection, as well as all the people who provided us with useful feedback!
(10/10)
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