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JoE Session

Paper Session

Saturday, Jan. 3, 2026 8:00 AM - 10:00 AM (EST)

Philadelphia Marriott Downtown
Hosted By: Econometric Society
  • Chair: Michael Jansson, University of California-Berkeley

Hedonic Prices and Quality Adjusted Price Indices Powered by AI

Patrick Bajari
,
Harvard Business School
Zhihao Cen
,
Meta
Victor Chernozhukov
,
Massachusetts Institute of Technology
Manoj Manukonda
,
Amazon
Suhas Vijaykumar
,
University of California-San Diego
Jin Wang
,
Netflix
Ramon Huerta
,
Amazon
Junbo Li
,
Amazon
Ling Leng
,
Pinterest
George Monokroussos
,
Wayfair
Shan Wang
,
Unaffiliated

Abstract

We develop empirical models that efficiently process large amounts of unstructured product data (text, images, prices, quantities) to produce accurate hedonic price estimates and derived indices. To achieve this, we generate abstract product attributes (or “features”) from descriptions and images using deep neural networks. These attributes are then used to estimate the hedonic price function. To demonstrate the effectiveness of this approach, we apply the models to Amazon’s data for first-party apparel sales, and estimate hedonic prices. The resulting models have a very high out-of-sample predictive accuracy, with
ranging from 80% to 90%. Finally, we construct the AI-based hedonic Fisher price index, chained at the year-over-year frequency, and contrast it with the CPI and other electronic indices.

Identification Robust Inference for the Risk Premium in Term Structure Models

Frank Kleibergen
,
University of Amsterdam
Lingwei Kong
,
University of Groningen

Abstract

We propose identification robust statistics for testing hypotheses on the risk premia in dynamic affine term structure models. We do so using the moment equation specification proposed in Adrian et al. (2013). Statistical inference based on their three-stage estimator requires knowledge of the risk factors’ quality and can be misleading when the

Discussant(s)
John C. Haltiwanger
,
University of Maryland
Enrique Sentana
,
CEMFI
JEL Classifications
  • C1 - Econometric and Statistical Methods and Methodology: General