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Panel Discussion
Elias Bareinboim · Mark van der Laan · Claire Vernade
Tue Dec 14 12:30 PM -- 01:10 PM (PST) @
Author Information
Elias Bareinboim (Columbia University)
Mark van der Laan
Claire Vernade (DeepMind)
Claire got her PhD from Telecom ParisTech (S2A team, Olivier Cappé) in October 2017 and she is now a post-doc at Amazon CoreAI in Berlin and at the University of Magdeburg, working with Alexandra Carpentier. Her work focuses on designing and analyzing bandit models for recommendation, A/B testing and other marketing-related applications. From a larger perspective, she is interested in modeling external sources of uncertainty -- or bias -- in order to understand the impact that it may have on the complexity of the learning and on the final result.
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