Making AI 'Smart': Bridging AI and Cognitive Science
- URL: http://arxiv.org/abs/2112.15360v1
- Date: Fri, 31 Dec 2021 09:30:44 GMT
- Title: Making AI 'Smart': Bridging AI and Cognitive Science
- Authors: Madhav Agarwal
- Abstract summary: With the integration of cognitive science, the 'artificial' characteristic of Artificial Intelligence might soon be replaced with'smart'
This will help develop more powerful AI systems and simultaneously gives us a better understanding of how the human brain works.
We argue that the possibility of AI taking over human civilization is low as developing such an advanced system requires a better understanding of the human brain first.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The last two decades have seen tremendous advances in Artificial
Intelligence. The exponential growth in terms of computation capabilities has
given us hope of developing humans like robots. The question is: are we there
yet? Maybe not. With the integration of cognitive science, the 'artificial'
characteristic of Artificial Intelligence (AI) might soon be replaced with
'smart'. This will help develop more powerful AI systems and simultaneously
gives us a better understanding of how the human brain works. We discuss the
various possibilities and challenges of bridging these two fields and how they
can benefit each other. We argue that the possibility of AI taking over human
civilization is low as developing such an advanced system requires a better
understanding of the human brain first.
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