Article

Identification of Mixtures of Dynamic Discrete Choices

Ayden Higgins, and Koen Jochmans

Abstract

This paper provides new identification results for finite mixtures of Markov processes. Our arguments yield identification from knowledge of the cross-sectional distribution of three (or more) effective time-series observations under simple conditions. We explain how our approach and results are different from those in previous work by Kasahara and Shimotsu (2009) and Hu and Shum (2012). Most notably, outside information, such as monotonicity restrictions that link conditional distributions to latent types, is not needed.

Keywords

discrete choice; heterogeneity; Markov process; mixture; state dependence;

JEL codes

  • C14: Semiparametric and Nonparametric Methods: General
  • C23: Panel Data Models • Spatio-temporal Models
  • C51: Model Construction and Estimation

Replaces

Ayden Higgins, and Koen Jochmans, Identification Of Mixtures Of Dynamic Discrete Choices, TSE Working Paper, n. 21-1272, November 23, 2021, revised January 2023.

Reference

Ayden Higgins, and Koen Jochmans, Identification of Mixtures of Dynamic Discrete Choices, Journal of Econometrics, vol. 237, n. 1, 105462, November 2023.

Published in

Journal of Econometrics, vol. 237, n. 1, 105462, November 2023