Abstraction and Analogy are the Keys to Robust AI - Melanie Mitchell
In 1955, John McCarthy and colleagues proposed an AI summer research project with the following aim: “An attempt will be made to find how to make machines use language, form abstractions and concepts, solve kinds of problems now reserved for humans, and improve themselves.” More than six decades later, all of these research topics remain open and actively investigated in the AI community. While AI has made dramatic progress over the last decade in areas such as vision, natural language processing, and robotics, current AI systems still almost entirely lack the ability to form humanlike concepts and abstractions.
In this talk, Professor Mitchell will argue that the inability to form conceptual abstractions—and to make abstraction-driven analogies—is a primary source of brittleness in state-of-the-art AI systems, which often struggle in adapting what they have learned to situations outside their training regimes. Professor Melanie Mitchell will reflect on the role played by analogy-making at all levels of intelligence, and on the prospects for developing AI systems with humanlike abilities for abstraction and analogy.
Please see below a list of relevant papers:
https://arxiv.org/abs/2202.05839
https://arxiv.org/abs/2104.12871
https://arxiv.org/abs/2102.10717
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Melanie Mitchell is the Davis Professor at the Santa Fe Institute. Her current research focuses on conceptual abstraction, analogy-making, and visual recognition in artificial intelligence systems. Melanie is the author or editor of six books and numerous scholarly papers in the fields of artificial intelligence, cognitive science, and complex systems. Her book Complexity: A Guided Tour (Oxford University Press) won the 2010 Phi Beta Kappa Science Book Award and was named by Amazon.com as one of the ten best science books of 2009. Her latest book is Artificial Intelligence: A Guide for Thinking Humans (Farrar, Straus, and Giroux).
Subscribe to our newsletter and stay in the know:
https://www.iarai.ac.at/event-type/seminars/
___________________________________________________________________
IARAI | Institute of Advanced Research in Artificial Intelligence
www.iarai.ac.at
Видео Abstraction and Analogy are the Keys to Robust AI - Melanie Mitchell канала IARAI Research
In this talk, Professor Mitchell will argue that the inability to form conceptual abstractions—and to make abstraction-driven analogies—is a primary source of brittleness in state-of-the-art AI systems, which often struggle in adapting what they have learned to situations outside their training regimes. Professor Melanie Mitchell will reflect on the role played by analogy-making at all levels of intelligence, and on the prospects for developing AI systems with humanlike abilities for abstraction and analogy.
Please see below a list of relevant papers:
https://arxiv.org/abs/2202.05839
https://arxiv.org/abs/2104.12871
https://arxiv.org/abs/2102.10717
______
Melanie Mitchell is the Davis Professor at the Santa Fe Institute. Her current research focuses on conceptual abstraction, analogy-making, and visual recognition in artificial intelligence systems. Melanie is the author or editor of six books and numerous scholarly papers in the fields of artificial intelligence, cognitive science, and complex systems. Her book Complexity: A Guided Tour (Oxford University Press) won the 2010 Phi Beta Kappa Science Book Award and was named by Amazon.com as one of the ten best science books of 2009. Her latest book is Artificial Intelligence: A Guide for Thinking Humans (Farrar, Straus, and Giroux).
Subscribe to our newsletter and stay in the know:
https://www.iarai.ac.at/event-type/seminars/
___________________________________________________________________
IARAI | Institute of Advanced Research in Artificial Intelligence
www.iarai.ac.at
Видео Abstraction and Analogy are the Keys to Robust AI - Melanie Mitchell канала IARAI Research
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