Research / BFI Working PaperAug 29, 2023

Stress Testing Structural Models of Unobserved Heterogeneity: Robust Inference on Optimal Nonlinear Pricing

Aaron Bodoh-Creed, Brent Hickman, John List, Ian Muir, Gregory Sun

In this paper, we provide a suite of tools for empirical market design, including optimal nonlinear pricing in intensive-margin consumer demand, as well as a broad class of related adverse-selection models. Despite significant data limitations, we are able to derive informative bounds on demand under counterfactual price changes. These bounds arise because empirically plausible DGPs must respect the Law of Demand and the observed shift(s) in aggregate demand resulting from a known exogenous price change(s). These bounds facilitate robust policy prescriptions using rich, internal data sources similar to those available in many real-world applications. Our partial identification approach enables viable nonlinear pricing design while achieving robustness against worst-case deviations from baseline model assumptions. As a side benefit, our identification results also provide useful, novel insights into optimal experimental design for pricing RCTs.

More Research From These Scholars

BFI Working Paper Apr 30, 2019

Measuring Success in Education: The Role of Effort on the Test Itself

John List, Uri Gneezy, Jeffrey A. Livingston, Xiangdong Qin, Sally Sadoff, Yang Xu
Topics:  Early Childhood Education
BFI Working Paper May 24, 2021

How Experiments with Children Inform Economics

John List, Ragan Petrie, Anya Samek
Topics:  Uncategorized
BFI Working Paper Sep 19, 2022

The Human Perils of Scaling Smart Technologies: Evidence from Field Experiments

Alec Brandon, Christopher M. Clapp, John List, Robert D. Metcalfe, Michael Price
Topics:  Technology & Innovation