Causal Seminar: Victor Chernozhukov

Hawes Hall, Classroom 101, Harvard Business School

Adventures in Demand Analysis Using AI

Based on the paper of the same name this talk explores empirical demand analysis by integrating multimodal product representations derived from artificial intelligence (AI). Using a detailed dataset of toy cars on Amazon.com, we combine text descriptions, images, and tabular covariates to represent each product using transformer-based embedding models. These embeddings capture nuanced attributes, such as quality, branding, and visual characteristics, that traditional methods often struggle to summarize. Moreover, we fine-tune these embeddings for causal inference tasks. We show that the resulting embeddings substantially improve the predictive accuracy of sales ranks and prices and that they lead to more credible causal estimates of price elasticity. Notably, we uncover strong heterogeneity in price elasticity driven by these product-specific features. Our findings illustrate that AI-driven representations can enrich and modernize empirical demand analysis. The insights generated may also prove valuable for applied causal inference more broadly.

a front facing portrait of a male wearing glasses and a sports coat

Victor Chernozhukov

Professor, Department of Economics and Center for Statistics
Massachusetts Institute of Technology


Victor Chernozhukov works in econometrics and mathematical statistics, with much of recent work focusing on the quantification of uncertainty in very high dimensional models. He is a fellow of The Econometric Society and a recipient of The Alfred P. Sloan Research Fellowship and The Arnold Zellner Award. He was elected to the American Academy of Arts and Sciences in April 2016.