AI RESEARCH

RAMP: Hybrid DRL for Online Learning of Numeric Action Models

arXiv CS.AI

ArXi:2604.08685v1 Announce Type: new Automated planning algorithms require an action model specifying the preconditions and effects of each action, but obtaining such a model is often hard. Learning action models from observations is feasible, but existing algorithms for numeric domains are offline, requiring expert traces as input. We propose the Reinforcement learning, Action Model learning, and Planning (RAMP) strategy for learning numeric planning action models online via interactions with the environment.