Keynote: Prof. Joshua B. Tenenbaum
Josh Tenenbaum
2024 Invited Talk
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Workshop: Multimodal Algorithmic Reasoning Workshop
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Workshop: Multimodal Algorithmic Reasoning Workshop
Speaker
Josh Tenenbaum
Josh Tenenbaum is an Associate Professor of Computational Cognitive
Science at MIT in the Department of Brain and Cognitive Sciences and
the Computer Science and Artificial Intelligence Laboratory (CSAIL).
He received his PhD from MIT in 1999, and was an Assistant Professor
at Stanford University from 1999 to 2002. He studies learning and
inference in humans and machines, with the twin goals of understanding
human intelligence in computational terms and bringing computers
closer to human capacities. He focuses on problems of inductive
generalization from limited data -- learning concepts and word
meanings, inferring causal relations or goals -- and learning abstract
knowledge that supports these inductive leaps in the form of
probabilistic generative models or 'intuitive theories'. He has also
developed several novel machine learning methods inspired by human
learning and perception, most notably Isomap, an approach to
unsupervised learning of nonlinear manifolds in high-dimensional data.
He has been Associate Editor for the journal Cognitive Science, has
been active on program committees for the CogSci and NIPS conferences,
and has co-organized a number of workshops, tutorials and summer
schools in human and machine learning. Several of his papers have
received outstanding paper awards or best student paper awards at the
IEEE Computer Vision and Pattern Recognition (CVPR), NIPS, and
Cognitive Science conferences. He is the recipient of the New
Investigator Award from the Society for Mathematical Psychology
(2005), the Early Investigator Award from the Society of Experimental
Psychologists (2007), and the Distinguished Scientific Award for Early
Career Contribution to Psychology (in the area of cognition and human
learning) from the American Psychological Association (2008).
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