AAAI 2022 Fall Symposium: System-1 and System-2 realized within the
Common Model of Cognition
- URL: http://arxiv.org/abs/2305.09091v2
- Date: Thu, 25 May 2023 00:43:22 GMT
- Title: AAAI 2022 Fall Symposium: System-1 and System-2 realized within the
Common Model of Cognition
- Authors: Brendan Conway-Smith and Robert L. West
- Abstract summary: We situating System-1 and System-2 within the Common Model of Cognition.
Results show that what are thought to be distinctive characteristics of System-1 and 2 instead form a spectrum of cognitive properties.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Attempts to import dual-system descriptions of System-1 and System-2 into AI
have been hindered by a lack of clarity over their distinction. We address this
and other issues by situating System-1 and System-2 within the Common Model of
Cognition. Results show that what are thought to be distinctive characteristics
of System-1 and 2 instead form a spectrum of cognitive properties. The Common
Model provides a comprehensive vision of the computational units involved in
System-1 and System-2, their underlying mechanisms, and the implications for
learning, metacognition, and emotion.
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