Lemley Family Leadership Lecture
Lecture Date March 2, 2022
Registration Required

Causality in Data Science

Past Lecture

Guido ImbensFeaturing

2021 Nobel Prize in Economics Winner Guido Imbens '91 Ph.D.

The Applied Econometrics Professor and Professor of Economics Graduate School of Business, Stanford University

Wednesday, March 2, 2022 | 5 p.m.

Salomon Center for Teaching, De Ciccio Auditorium, Room 101
79 Waterman Street

A conversation moderated by Provost Richard M. Locke, Schreiber Family Professor of Political Science and International and Public Affairs, will follow the talk.

Speaker Biography

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We all know that correlation does not imply causality. However, in most cases in economics and other social and natural sciences it is causality that we are interested in, not just correlation. We want to know what the causal effects of educational interventions are on outcomes later in life. We want to know whether medical interventions are effective. We want to know what the effect on the economy is of decisions on interest rates by the Federal Reserve Bank, or the effect of a merger of two companies. In natural sciences we are often able to do randomized experiments, and these form the basis of decisions on drug approvals by the Food and Drug Administration. In social sciences it is often impossible to do randomized experiments; they may not be feasible conceptually or not ethical. We therefore rely in many cases on observational studies to infer causal effects. Econometrics has, since its early days in the 1920s, been focused on drawing credible causal inferences in such settings. In this lecture Guido Imbens will discuss some of the history of these methods and some recent examples, with a particular focus on the recent "credibility revolution" in economics.

A conversation moderated by Provost Richard M. Locke, Schreiber Family Professor of Political Science and International and Public Affairs, will follow the talk.