Lars van der Laan

University of Washington, Seattle. Department of Statistics

prof_pic1.jpg

B313

Padelford Hall, Northeast Stevens Way

Seattle, WA 98103

lvdlaan@uw.edu

About me

I am a final-year Ph.D. candidate in Statistics at the University of Washington, advised by Marco Carone and Alex Luedtke.

My research focuses on causal inference and dynamic decision-making, semiparametric statistics, and reinforcement learning. I develop methods for debiased and efficient estimation with modern machine learning, including doubly robust inference, automatic debiasing, inference after model selection, and heterogeneous treatment effects.

I am supported by a Netflix Graduate Research Fellowship and work closely with Nathan Kallus and Aurélien Bibaut. Our projects span long-term causal inference via reinforcement learning (paper), nonparametric instrumental variables inference (paper), and inverse reinforcement learning estimation and inference. I also work on RL theory for Fitted Q Evaluation and Soft Fitted Q Iteration.

Another line of my research leverages calibration, a tool from machine learning, to advance methods in causal inference and dynamic decision-making. Examples include causal isotonic calibration for CATE estimation, stabilized inverse probability weighting for robust weighting, Bellman calibration for reinforcement learning, and doubly robust inference via calibration for valid inference under slow or inconsistent nuisance estimation.

I also develop methods for predictive uncertainty quantification, focusing on finite-sample, distribution-free guarantees for modern black-box models. This includes self-calibrating conformal prediction and generalized Venn–Abers calibration (with Ahmed Alaa, UC Berkeley), with applications to regression, quantile estimation, and prediction intervals.

Beyond methodology, I apply these ideas in biomedical and technology domains through research internships at Genentech, the Fred Hutchinson Cancer Center, and Netflix. I also contribute to the tlverse open-source software ecosystem and consult for TLRevolution.

selected publications

2025

  1. Efficient Inference for Inverse Reinforcement Learning and Dynamic Discrete Choice Models
    Lars van der Laan, Aurelien Bibaut, and Nathan Kallus
    arXiv preprint arXiv:2512.24407, 2025
  2. Fitted Q Evaluation without Bellman Completeness via Stationary Weighting
    Lars van der Laan, and Nathan Kallus
    arXiv preprint arXiv:2512.23805, 2025
  3. Nonparametric Instrumental Variable Inference with Many Weak Instruments
    Lars van der Laan, Nathan Kallus, and Aurélien Bibaut
    2025
  4. Automatic Debiased Machine Learning for Smooth Functionals of Nonparametric M-Estimands
    Lars van der Laan, Aurelien Bibaut, Nathan Kallus, and 1 more author
    2025
  5. Semiparametric Double Reinforcement Learning with Applications to Long-Term Causal Inference
    Lars van der Laan, David Hubbard, Allen Tran, and 2 more authors
    2025
  6. Stabilized Inverse Probability Weighting via Isotonic Calibration
    Lars van der Laan, Ziming Lin, Marco Carone, and 1 more author
    In Proceedings of the 3rd Conference on Causal Learning and Reasoning (CLeaR), 2025
    To appear
  7. Inverse Reinforcement Learning Using Just Classification and a Few Regressions
    Lars van der Laan, Nathan Kallus, and Aurélien Bibaut
    arXiv preprint arXiv:2509.21172, 2025

2024

  1. Doubly robust inference via calibration
    Lars van der Laan, Alex Luedtke, and Marco Carone
    arXiv preprint arXiv:2411.02771, 2024
  2. Self-Calibrating Conformal Prediction
    Lars van der Laan, and Ahmed M. Alaa
    The Thirty-eighth Annual Conference on Neural Information Processing Systems, 2024
  3. Combining T-learning and DR-learning: a framework for oracle-efficient estimation of causal contrasts
    Lars van der Laan, Marco Carone, and Alex Luedtke
    arXiv preprint arXiv:2402.01972, 2024

2023

  1. Causal isotonic calibration for heterogeneous treatment effects
    Lars van der Laan, Ernesto Ulloa-Pérez, Marco Carone, and 1 more author
    In Proceedings of the 40th International Conference on Machine Learning (ICML), 2023