25

May

Teaser image to Estimating the Long-Term Effects of Novel Treatments

Estimating the Long-Term Effects of Novel Treatments

Vasilis Syrgkanis, Stanford University

   25.05.2023

   6:00 pm - 7:30 pm

   LMU Institute of AI in Management via zoom

Estimating long-term effects with limited historical data is challenging. This talk proposes a surrogate-based approach, combining techniques like surrogate indices, dynamic treatment effect estimation, and double machine learning.


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