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Artificial Intelligence
Volume 171, Issue 18, December 2007, Pages 1174-1182
Special Review Issue
 
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doi:10.1016/j.artint.2007.10.009    How to Cite or Link Using DOI (Opens New Window)
Copyright © 2007 Published by Elsevier B.V.

From here to human-level AI

John McCarthya, E-mail The Corresponding Author, E-mail The Corresponding Author

aComputer Science Department, Stanford University, Stanford, CA 94305, USA

Available online 10 October 2007.

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Abstract

Human-level AI will be achieved, but new ideas are almost certainly needed, so a date cannot be reliably predicted—maybe five years, maybe five hundred years. I'd be inclined to bet on this 21st century.

It is not surprising that human-level AI has proved difficult and progress has been slow—though there has been important progress. The slowness and the demand to exploit what has been discovered has led many to mistakenly redefine AI, sometimes in ways that preclude human-level AI—by relegating to humans parts of the task that human-level computer programs would have to do. In the terminology of this paper, it amounts to settling for a bounded informatic situation instead of the more general common sense informatic situation.

Overcoming the “brittleness” of present AI systems and reaching human-level AI requires programs that deal with the common sense informatic situation—in which the phenomena to be taken into account in achieving a goal are not fixed in advance.

We discuss reaching human-level AI, emphasizing logical AI and especially emphasizing representation problems of information and of reasoning. Ideas for reasoning in the common sense informatic situation include nonmonotonic reasoning, approximate concepts, formalized contexts and introspection.

Keywords: Human-level AI; Elaboration tolerance


Artificial Intelligence
Volume 171, Issue 18, December 2007, Pages 1174-1182
Special Review Issue
 
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