Lars van der Laan
Postdoctoral Scholar, Stanford University, Department of Management Science and Engineering
Seattle, WA
lvdlaan@uw.edu
About me
I am a postdoctoral scholar in the Department of Management Science and Engineering at Stanford University, working under Professor Vasilis Syrgkanis and supported by Netflix Research. I completed my Ph.D. in Statistics at the University of Washington in June 2026, advised by Marco Carone and Alex Luedtke, during which I was supported by a Netflix Graduate Research Fellowship.
My research focuses on causal inference, semiparametric statistics, and reinforcement learning. I develop methods for debiased and efficient estimation with machine learning, including calibrated DML for doubly robust inference, adaptive DML for selective inference, automatic DML for M-estimation, and efficient plug-in learning for estimating heterogeneous treatment effects.
I collaborate with Nathan Kallus and Aurélien Bibaut at Netflix. More broadly, my work spans long-term causal inference, nonparametric instrumental variables inference, inverse reinforcement learning and dynamic discrete choice models, and value estimation in offline reinforcement learning, including Fitted Q Evaluation and Fitted Q Iteration without Bellman completeness.
Another theme of my research is calibration: adapting post-hoc tools from predictive modeling to causal inference and dynamic decision-making. This includes causal isotonic calibration for heterogeneous treatment effect estimation, calibration of inverse probability weighting estimators, Bellman calibration for offline reinforcement learning, calibrated debiased machine learning, and calibrated prediction-powered inference. I have also worked on calibration for predictive uncertainty quantification and conformal prediction.
Beyond methodology, I apply these ideas in biomedical and technology settings through research internships at Genentech, the Fred Hutchinson Cancer Center, and Netflix. I also care about teaching and mentorship. I recently wrote a guide on empirical risk minimization.