Safe Planning in Interactive Environments via Iterative Policy Updates and Adversarially Robust Conformal Prediction

Omid Mirzaeedodangeh, Eliot Seo Shekhtman, Nikolai Matni, Lars Lindemann
Proceedings of The 8th Annual Learning for Dynamics and Control Conference, PMLR 331:678-704, 2026.

Abstract

Safe planning of an autonomous agent in interactive environments – such as the control of a self-driving vehicle among pedestrians and human-controlled vehicles – poses a major challenge as the behavior of the environment is unknown and reactive to the behavior of the autonomous agent. This coupling gives rise to interaction-driven distribution shifts where the autonomous agent’s control policy may change the environment’s behavior, thereby invalidating safety guarantees in existing work. Indeed, recent works have used conformal prediction (CP) to generate distribution-free safety guarantees using observed data of the environment. However, CP’s assumption on data exchangeability is violated in interactive settings due to a circular dependency where a control policy update changes the environment’s behavior, and vice versa. To address this gap, we propose an iterative framework that robustly maintains safety guarantees across policy updates by quantifying the potential impact of a planned policy update on the environment’s behavior. We realize this via adversarially robust CP where we perform a regular CP step in each episode using observed data under the current policy, but then transfer safety guarantees across policy updates by analytically adjusting the CP result to account for distribution shifts. This adjustment is performed based on a policy-to-trajectory sensitivity analysis, resulting in a safe, episodic open-loop planner. We further conduct a contraction analysis of the system providing conditions under which both the CP results and the policy updates are guaranteed to converge. We empirically demonstrate these safety and convergence guarantees on a two-dimensional car-pedestrian and a high-dimensional quadcopter case study. To the best of our knowledge, these are the first results that provide valid safety guarantees in such interactive settings.

Cite this Paper


BibTeX
@InProceedings{pmlr-v331-mirzaeedodangeh26a, title = {Safe Planning in Interactive Environments via Iterative Policy Updates and Adversarially Robust Conformal Prediction}, author = {Mirzaeedodangeh, Omid and Shekhtman, Eliot Seo and Matni, Nikolai and Lindemann, Lars}, booktitle = {Proceedings of The 8th Annual Learning for Dynamics and Control Conference}, pages = {678--704}, year = {2026}, editor = {Sukhatme, Gaurav and Lindemann, Lars and Tu, Stephen and Wierman, Adam and Atanasov, Nikolay}, volume = {331}, series = {Proceedings of Machine Learning Research}, month = {17--19 Jun}, publisher = {PMLR}, pdf = {https://raw.githubusercontent.com/mlresearch/v331/main/assets/mirzaeedodangeh26a/mirzaeedodangeh26a.pdf}, url = {https://proceedings.mlr.press/v331/mirzaeedodangeh26a.html}, abstract = {Safe planning of an autonomous agent in interactive environments – such as the control of a self-driving vehicle among pedestrians and human-controlled vehicles – poses a major challenge as the behavior of the environment is unknown and reactive to the behavior of the autonomous agent. This coupling gives rise to interaction-driven distribution shifts where the autonomous agent’s control policy may change the environment’s behavior, thereby invalidating safety guarantees in existing work. Indeed, recent works have used conformal prediction (CP) to generate distribution-free safety guarantees using observed data of the environment. However, CP’s assumption on data exchangeability is violated in interactive settings due to a circular dependency where a control policy update changes the environment’s behavior, and vice versa. To address this gap, we propose an iterative framework that robustly maintains safety guarantees across policy updates by quantifying the potential impact of a planned policy update on the environment’s behavior. We realize this via adversarially robust CP where we perform a regular CP step in each episode using observed data under the current policy, but then transfer safety guarantees across policy updates by analytically adjusting the CP result to account for distribution shifts. This adjustment is performed based on a policy-to-trajectory sensitivity analysis, resulting in a safe, episodic open-loop planner. We further conduct a contraction analysis of the system providing conditions under which both the CP results and the policy updates are guaranteed to converge. We empirically demonstrate these safety and convergence guarantees on a two-dimensional car-pedestrian and a high-dimensional quadcopter case study. To the best of our knowledge, these are the first results that provide valid safety guarantees in such interactive settings.} }
Endnote
%0 Conference Paper %T Safe Planning in Interactive Environments via Iterative Policy Updates and Adversarially Robust Conformal Prediction %A Omid Mirzaeedodangeh %A Eliot Seo Shekhtman %A Nikolai Matni %A Lars Lindemann %B Proceedings of The 8th Annual Learning for Dynamics and Control Conference %C Proceedings of Machine Learning Research %D 2026 %E Gaurav Sukhatme %E Lars Lindemann %E Stephen Tu %E Adam Wierman %E Nikolay Atanasov %F pmlr-v331-mirzaeedodangeh26a %I PMLR %P 678--704 %U https://proceedings.mlr.press/v331/mirzaeedodangeh26a.html %V 331 %X Safe planning of an autonomous agent in interactive environments – such as the control of a self-driving vehicle among pedestrians and human-controlled vehicles – poses a major challenge as the behavior of the environment is unknown and reactive to the behavior of the autonomous agent. This coupling gives rise to interaction-driven distribution shifts where the autonomous agent’s control policy may change the environment’s behavior, thereby invalidating safety guarantees in existing work. Indeed, recent works have used conformal prediction (CP) to generate distribution-free safety guarantees using observed data of the environment. However, CP’s assumption on data exchangeability is violated in interactive settings due to a circular dependency where a control policy update changes the environment’s behavior, and vice versa. To address this gap, we propose an iterative framework that robustly maintains safety guarantees across policy updates by quantifying the potential impact of a planned policy update on the environment’s behavior. We realize this via adversarially robust CP where we perform a regular CP step in each episode using observed data under the current policy, but then transfer safety guarantees across policy updates by analytically adjusting the CP result to account for distribution shifts. This adjustment is performed based on a policy-to-trajectory sensitivity analysis, resulting in a safe, episodic open-loop planner. We further conduct a contraction analysis of the system providing conditions under which both the CP results and the policy updates are guaranteed to converge. We empirically demonstrate these safety and convergence guarantees on a two-dimensional car-pedestrian and a high-dimensional quadcopter case study. To the best of our knowledge, these are the first results that provide valid safety guarantees in such interactive settings.
APA
Mirzaeedodangeh, O., Shekhtman, E.S., Matni, N. & Lindemann, L.. (2026). Safe Planning in Interactive Environments via Iterative Policy Updates and Adversarially Robust Conformal Prediction. Proceedings of The 8th Annual Learning for Dynamics and Control Conference, in Proceedings of Machine Learning Research 331:678-704 Available from https://proceedings.mlr.press/v331/mirzaeedodangeh26a.html.

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