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Fundamental statistical limits in causal inference
May 9, 2025 @ 11:00 am - 12:00 pm
Sivaraman Balakrishnan (Carnegie Mellon University)
E18-304
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Abstract:
Despite tremendous methodological advances in causal inference, there remain significant gaps in our understanding of the fundamental statistical limits of estimating various causal estimands from observational data. In this talk I will survey some recent work that aims to make some progress towards closing these gaps. Particularly, I will discuss the fundamental limits of estimating various important causal estimands under classical smoothness assumptions, under new “structure-agnostic” assumptions, in a discrete setup, and under partial smoothness assumptions. Via these fundamental limits we will also attempt to understand the optimality/sub-optimality of simple, practical procedures for estimating causal effects from observational data.
Sivaraman is a Professor with a joint appointment in the Department of Statistics and Data Science, and the Machine Learning Department at Carnegie Mellon. This year he is a long-term visitor at the Simons Institute, and a visiting scholar in the Department of Statistics at Berkeley. Prior to Carnegie Mellon he was a postdoctoral researcher at UC Berkeley working with Martin Wainwright and Bin Yu. His research interests are broadly in statistical machine learning and algorithmic statistics. Particular areas that he is currently most fascinated by include optimal transport, causal inference, robust statistics and minimax hypothesis testing.