D76 Advances In Adaptive Experimentation WorkshopInfo Location Attendee Categories Contact More Info Event Information![]()
DescriptionAdvances in Adaptive Experimentation is a 2-day workshop hosted by the Gatsby Computational Neuroscience Unit at University College London on June 18–19, 2026. The workshop brings together researchers working at the interface of adaptive experimentation, causal inference, online learning, bandits, and modern statistical methods for sequential decision-making. It is intended as a focused technical meeting point for theory, methodology, and discussion across communities concerned with learning, inference, and decision-making from adaptively collected data. The programme will feature invited talks, informal discussion, an open problems session, and a poster session. Topics include exploration-exploitation trade-offs, stability conditions for adaptive data collection, regret minimization, best-arm identification, structured feedback, identification, nuisance-robust methods, and semiparametric efficiency theory. The open problems session will provide space for concise technical questions, conjectures, limitations, and unresolved obstacles that may benefit from collective discussion. The poster session will highlight recent, ongoing, or discussion-stage theoretical work in adaptive experimentation and related foundations of sequential decision-making.
Please also see the "More Info Tab" https://aae-workshop.github.io/info/
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Attendee CategoriesStandard Rate.
Additional ItemsContactFor all queries in regards to this Event please contact the following :- Bariscan Bozkurt or
PLEASE ONLY CONTACT THE ONLINE STORE DIRECTLY IF YOU ARE EXPERIENCING PROBLEMS WITH YOUR DEBIT/CREDIT CARD PAYMENT, FOR ALL OTHER QUERIES RELATING TO THIS EVENT, INCLUDING CANCELLATIONS THESE SHOULD BE DIRECTED TO THE CONTACT DETAILS ABOVE. More InformationThe workshop is aimed at researchers, students, and practitioners interested in the theoretical and methodological foundations of adaptive data collection, causal inference, and sequential decision-making. Confirmed speakers include Tor Lattimore, Emma Brunskill, Gergely Neu, Koulik Khamaru, Kelly Zhang, Aurélien Bibaut, and Ian Waudby-Smith. | |||||||||||||||




