Two new papers explore the theoretical underpinnings of adversarial imitation learning (AIL), a technique that uses neural networks to learn from expert demonstrations. The first paper introduces OPT-AIL, a framework designed to bridge the gap between AIL theory and practice by enabling efficient online learning with general function approximation. The second paper analyzes AIL's effectiveness in low-sample regimes, explaining how it can achieve strong performance with minimal expert data and maintain it across long planning horizons. AI
影响 These theoretical advancements could lead to more robust and data-efficient imitation learning systems for robotics and autonomous agents.
排序理由 Two arXiv papers present theoretical analyses and practical algorithms for adversarial imitation learning.
- Adversarial Imitation Learning
- neural network
- arXiv
- dynamic programming
- expert trajectories
- function approximation
- Machine Learning
- Markov decision process
- OPT-AIL
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