Peter Dayan
Peter Dayan | |
---|---|
Born | Peter Samuel Dayan 1965 (age 58–59) |
Alma mater | University of Cambridge (BA) University of Edinburgh (PhD) |
Awards | Rumelhart Prize (2012) The Brain Prize (2017) |
Scientific career | |
Fields | Computational neuroscience |
Institutions | University College London Massachusetts Institute of Technology Uber[1] University of Toronto Salk Institute |
Thesis | Reinforcing connectionism : learning the statistical way (1991) |
Doctoral advisor | David Willshaw |
Website | www |
Peter Samuel Dayan FRS is the director of the Gatsby Charitable Foundation Computational Neuroscience Unit at University College London.[2] He is co-author of Theoretical Neuroscience, a textbook on Computational neuroscience.[citation needed] He is known for applying Bayesian methods from machine learning and artificial intelligence to understand neural function, and is particularly recognized for having related neurotransmitter levels to prediction errors and Bayesian uncertainties.[3] He co-authored a paper on Q-learning with Chris Watkins,[4][clarification needed] and provided a proof of convergence of TD(λ) for arbitrary λ.[5]
Education
Dayan studied mathematics at the University of Cambridge and then continued for a PhD in artificial intelligence at the University of Edinburgh on statistical learning [6]with David Willshaw, focusing on associative memory and reinforcement learning.[6]
Career and research
After his PhD, Dayan held postdoctoral research positions with Terry Sejnowski at the Salk Institute and Geoffrey Hinton at the University of Toronto. He then took up an assistant professor position at the Massachusetts Institute of Technology, and later[when?] moved to University College London, where he became Professor and Director of the Gatsby Computational Neuroscience Unit.
Awards and honours
Dayan was elected a Fellow of the Royal Society (FRS) in 2018.[7] He was awarded the Rumelhart Prize in 2012 and The Brain Prize in 2017.[7]
References
- ^ Ghahramani, Zoubin (2017). "Welcoming Peter Dayan to Uber AI Labs". uber.com.
- ^ "Peter Dayan". www.gatsby.ucl.ac.uk.
- ^ Schultz, W., Dayan, P., & Montague, P. R. (1997). A neural substrate of prediction and reward. Science, 275 (5306), 1593–1599 doi:10.1126/science.275.5306.1593
- ^ Watkins, Christopher JCH, and Peter Dayan. "Q-learning". Machine learning 8, no. 3–4 (1992): 279–292. doi:10.1007/BF00992698
- ^ Dayan, Peter. "The convergence of TD (λ) for general λ". Machine learning 8, no. 3–4 (1992): 341–362 doi:10.1023/A:1022632907294
- ^ a b Dayan, Peter Samuel (1991). Reinforcing connectionism: learning the statistical way. lib.ed.ac.uk (PhD thesis). hdl:1842/14754. EThOS uk.bl.ethos.649240.
- ^ a b Anon (2018). "Professor Peter Dayan FRS". royalsociety.org. London: Royal Society. Retrieved 22 May 2018. One or more of the preceding sentences incorporates text from the royalsociety.org website where:
“All text published under the heading 'Biography' on Fellow profile pages is available under Creative Commons Attribution 4.0 International License.” --Royal Society Terms, conditions and policies at the Wayback Machine (archived 2016-11-11)
This article incorporates text available under the CC BY 4.0 license.