ArXiv TLDR

Identification and Estimation of Consumers' Preferences from Repeated Observations under Nonlinear Pricing

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2604.25507

Samuele Centorrino, Frédérique Fève, Jean-Pierre Florens

econ.EM

TLDR

This paper introduces a nonparametric method to identify and estimate consumer preferences and heterogeneity under nonlinear pricing schedules.

Key contributions

  • Develops a nonparametric method to identify consumer preferences and unobserved heterogeneity under nonlinear pricing.
  • Nonparametrically identifies utility functions and preference type distributions using multiple price schedules.
  • Proposes an iterative estimation approach with near-parametric convergence rates and low variance growth.
  • Includes a valid bootstrap procedure for finite-sample inference and handles price endogeneity.

Why it matters

This paper provides a robust nonparametric framework for understanding consumer behavior under complex pricing. Its novel estimation and inference methods offer significant advancements for economic modeling and empirical analysis.

Original Abstract

We develop a nonparametric approach to identify and estimate consumer preferences and unobserved heterogeneity under nonlinear price schedules. Leveraging variation across multiple price schedules, we show that both the utility function and the distribution of preference types can be nonparametrically identified. The quantile function of unobserved types becomes solution of a functional equation, and we derive conditions ensuring identification. We propose an iterative approach for estimation, in which the regularization bias decays exponentially in the number of iterations while the variance grows only polynomially, yielding a near-parametric convergence rate. We propose a valid bootstrap procedure for finite-sample inference and extend the framework to accommodate potential endogeneity of prices and additional observed heterogeneity. Monte Carlo simulations and an empirical application to data from a European mail carrier demonstrate how we can recover the utility functions and preference distributions in finite samples.

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