Statistics and Data Science Seminar

Views Navigation

Event Views Navigation

Fundamental statistical limits in causal inference

Sivaraman Balakrishnan, Carnegie Mellon University
E18-304

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…

Find out more »


MIT Statistics + Data Science Center
Massachusetts Institute of Technology
77 Massachusetts Avenue
Cambridge, MA 02139-4307
617-253-1764