I am an Assistant Professor in Agricultural and Resource Economics at UC Davis. My research sits at the intersection of econometrics, machine learning, and environmental economics. I develop new methods for causal inference and panel data analysis, with a particular focus on settings with high-dimensional structure and environmental applications. My goal is to build econometric tools that are both statistically rigorous and practically useful for applied work in microeconomics, especially in agricultural and environmental settings.
I received my PhD in Economics from MIT, where I was also part of the Interdisciplinary Ph.D. in Statistics (IDPS) program. Before MIT, I earned my bachelor's degree in Economics and Statistics from the University of Chicago and completed the Stanford GSB Research Fellows Program.
Dynamic Biases of Static Panel Data Estimators (2024)
[preprint] [arXiv]Estimating Continuous Treatment Effects in Panel Data using Machine Learning with a Climate Application (2022)
[arXiv]Optimal Insurance Scope: Theory and Evidence from US Crop Insurance (2024)
[preprint]Bagged Polynomial Regression and Neural Networks (2022)
[arXiv]Automatic Double Machine Learning for Continuous Treatment Effects (2021)
[arXiv]Synthetic Differences-in-Differences with Covariates (2024)
[pdf]The Long-Term Effect of Childhood Exposure to Technology Using Surrogates (2022)
[pdf]hdm High-Dimensional Metrics (R package).dbc Dynamic Bias Correction (R package).