Binarization for Panel Models with Fixed Effects

Date
Thursday 25 Apr 2019, 16:00 - 17:00
Type
Seminar
Spoken Language
English
Room
1-10
Building
Polak Building
Location
Campus Woudestein
Add to calendar

Chris Muris (Bristol University)

Abstract In nonlinear panel models with fixed effects and fixed-T, the incidental parameter problem poses identification difficulties for structural parameters and partial effects.

Existing solutions are model-specific, likelihood-based, impose time homogeneity, or restrict the distribution of unobserved heterogeneity. We provide new identification results for the structural function and for partial effects in a large class of Fixed Effects Linear Transformation (FELT) models with unknown, time-varying, weakly monotone transformation functions. Our results accommodate continuous and discrete outcomes and covariates, require only two time periods, and impose no parametric distributional assumptions.

First, we provide a systematic solution to the incidental parameter problem in FELT. Second, we identify the distribution of counterfactual outcomes and a menu of time-varying partial effects without any assumptions on the distribution of unobserved heterogeneity. Third, we obtain new results for nonlinear difference-in-differences that accommodate both discrete and censored outcomes, and for FELT with random coefficients. Finally, we propose rank- and likelihood-based estimators that achieve \sqrt{n} rate of convergence.

Authors: Irene Botosaru and Chris Muris (University of Bristol)

  • Chris is an associate professor at the Department of Economics. His academic interests are theoretical and applied microeconometrics. He has published a number of papers in top journals, such as Review of Economics and Statistics, JOE, JASA, ET, etc.

    More information can be found at https://chrismuris.github.io/

More information

Coordinators: Andreas Alfons, alfons@ese.eur.nl and Wendun Wang, wang@ese.eur.nl

Contact: Anneke Kop, eb-secr@ese.eur.nl

Compare @count study programme

  • @title

    • Duration: @duration
Compare study programmes