AAAI 2026

January 22, 2026

Singapore, Singapore

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Generalization to unseen environments is a significant challenge in the field of robotics and control. In this work, we focus on contextual reinforcement learning, where agents act within environments with varying contexts, such as self-driving cars or quadrupedal robots that need to operate in different terrains or weather conditions than they were trained for. We tackle the critical task of generalizing to out-of-distribution (OOD) settings, without access to explicit context information at test time. Recent work has addressed this problem by training a context encoder and a history adaptation module in separate stages. While promising, this two-phase approach is cumbersome to implement and train. We simplify the methodology and introduce SPARC: single-phase adaptation for robust control. We test SPARC on varying contexts within the high-fidelity racing simulator Gran Turismo 7 and wind-perturbed MuJoCo environments, and find that it achieves reliable and robust OOD generalization.

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Next from AAAI 2026

Personalize Before Retrieve: LLM-based Personalized Query Expansion for User-Centric Retrieval
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Personalize Before Retrieve: LLM-based Personalized Query Expansion for User-Centric Retrieval

AAAI 2026

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Weinan Gan and 11 other authors

22 January 2026

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