16
Jul
©geralt - pixabay.com
Lecture
Methodological Advances in Experimental Design
Drew Dimmery, Hertie School Data Science Lab
16.07.2024
11:00 am - 12:30 pm
LMU Munich, Seminar Room 211, 2/F, Ludwigstr. 28 (Front Building)
Drew Dimmery will discuss methodological advances in experimental design, emphasizing resolving issues before data collection.
They will cover three key areas: enhancing treatment assignment for better generalization of causal effects, improving the estimation of heterogeneous treatment effects by connecting design to the MAXCUT problem, and developing efficient online assignment procedures for sequential experiments. These advancements aim to optimize experimental outcomes and robustness, drawing on recent research and algorithmic innovations.
Organized by:
Institute of AI in Management
LMU Munich
Related
©jittawit.21 - stock.adobe.com
AI Keynote Series • 20.11.2025 • Online via Zoom
Distilling Heterogeneous Treatment Effects: Stable Subgroup Estimation in Causal Inference
Join the lecture with Melody Huang from Political Science and Statistics & Data Science at Yale University.
©jittawit.21 - stock.adobe.com
AI Keynote Series • 13.11.2025 • Online via Zoom
Personalized Care Through Causal & Federated Learning: From Data to Decisions
Join the lecture with Julie Josse from French National Instiute for Research in Digital Science and Technology (Inria).