Job Market Talk: "Dynamic Biases of Static Panel Data Estimators," Sylvia Klosin, MIT
Speaker
Sylvia Klosin, MIT
Biography
Sylvia Klosin is currently a Ph.D. student in Economics at MIT, where I'm also part of the Interdisciplinary Ph.D. in Statistics (IDPS) program. I received my bachelor's degree in Economics and Statistics from the University of Chicago in 2017 and completed the Stanford GSB Research Fellows Program in 2019. My main research fields are econometrics and environmental economics.
Event Details
Paper: https://klosins.github.io/Klosin_JMP.pdf
Abstract: This paper identifies an important bias — termed dynamic bias — in fixed effects panel estimators that arises when dynamic feedback is ignored in the estimating equation. Dynamic feedback occurs if past outcomes impact current outcomes, a feature of many settings ranging from economic growth to agricultural and labor markets. When estimating equations omit past outcomes, dynamic bias can lead to significantly inaccurate treatment effect estimates, even with randomly assigned treatments. This dynamic bias in simulations is larger than Nickell bias. I show that dynamic bias stems from the estimation of fixed effects, as their estimation generates confounding in the data. To recover consistent treatment effects, I develop a flexible estimator that provides fixed-T bias correction. I apply this approach to study the impact of temperature shocks on GDP, a canonical example where economic theory points to an important feedback from past to future outcomes. Accounting for dynamic bias lowers the estimated effects of higher yearly temperatures on GDP growth by 10% and GDP levels by 120%.