Latest Past Events

Brandon Stewart, Princeton University

CCPR Seminar Room, 4240 Public Affairs Building, Los Angeles, CA, 90095, United States 101 Sumner Ave

How to Make Causal Inferences Using Texts

Texts are increasingly used to make causal inferences: either with the document serving as the treatment or the outcome. We introduce a new conceptual framework to understand all text-based causal inferences, demonstrate fundamental problems that arise when using manual or computational approaches applied to text for causal inference, and provide solutions to the problems we raise.  We demonstrate that all text-based causal inferences depend upon a latent representation of the text and we provide a framework to learn the latent representation.  Estimating this latent representation, however, creates new risks: we may unintentionally create a dependency across observations or create opportunities to fish for large effects.  To address these risks, we introduce a train/test split framework and apply it to estimate causal effects from an experiment on immigration attitudes and a study on bureaucratic responsiveness.  Our work provides a rigorous foundation for text-based causal inferences, connecting two previously disparate literatures. (Joint Work with Egami, Fong, Grimmer and Roberts)

Susan Athey, Stanford University

CCPR Seminar Room, 4240 Public Affairs Building, Los Angeles, CA, 90095, United States 101 Sumner Ave

Estimating Heterogeneous Treatment Effects and Optimal Treatment Assignment Policies

Abstract: This talk will review recently developed methods for estimating conditional average treatment effects and optimal treatment assignment policies in experimental and observational studies, including settings with unconfoundedness or instrumental variables. Multi-armed bandits for learning treatment assignment policies will also be considered.

Eloise Kaizar, Ohio State University

1434A Physics and Astronomy 1434A Physics and Astronomy, Los Angeles

Eloise Kaizar, Ohio State University Randomized controlled trials are often thought to provide definitive evidence on the magnitude of treatment effects. But because treatment modifiers may have a different distribution […]