AIBullisharXiv – CS AI · 15h ago7/10
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Neuro-Inspired Inverse Learning for Planning and Control
Researchers present Inverse Learning (IL), a neuro-inspired framework for embodied AI planning that outperforms offline reinforcement learning and diffusion-based planners on D4RL benchmarks by an average of 24.2% while requiring 1-2 orders of magnitude less inference compute. The approach optimizes entire action sequences through forward models rather than step-by-step decisions, enabling faster, smoother control policies applicable to robotics and quantum gate synthesis.