DEEDEE: Fast and Scalable Out-of-Distribution Dynamics Detection

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📝 Original Info

  • Title: DEEDEE: Fast and Scalable Out-of-Distribution Dynamics Detection
  • ArXiv ID: 2510.21638
  • Date: 2025-10-24
  • Authors: ** 제공되지 않음 (논문에 저자 정보가 포함되지 않았습니다.) **

📝 Abstract

Deploying reinforcement learning (RL) in safety-critical settings is constrained by brittleness under distribution shift. We study out-of-distribution (OOD) detection for RL time series and introduce DEEDEE, a two-statistic detector that revisits representation-heavy pipelines with a minimal alternative. DEEDEE uses only an episodewise mean and an RBF kernel similarity to a training summary, capturing complementary global and local deviations. Despite its simplicity, DEEDEE matches or surpasses contemporary detectors across standard RL OOD suites, delivering a 600-fold reduction in compute (FLOPs / wall-time) and an average 5% absolute accuracy gain over strong baselines. Conceptually, our results indicate that diverse anomaly types often imprint on RL trajectories through a small set of low-order statistics, suggesting a compact foundation for OOD detection in complex environments.

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