Symbolic Planning
Symbolic planning aims to automate the creation of action sequences (plans) to achieve complex goals, bridging the gap between high-level reasoning and low-level execution. Current research focuses on improving the efficiency and scalability of planners, exploring novel architectures like transformers and integrating them with large language models and affordance-based representations to enhance generalization and handle uncertainty. These advancements are significant for robotics, AI, and other fields requiring automated decision-making in complex, dynamic environments, enabling more robust and adaptable intelligent systems.
Papers
Online Grounding of Symbolic Planning Domains in Unknown Environments
Leonardo Lamanna, Luciano Serafini, Alessandro Saetti, Alfonso Gerevini, Paolo Traverso
Creativity of AI: Hierarchical Planning Model Learning for Facilitating Deep Reinforcement Learning
Hankz Hankui Zhuo, Shuting Deng, Mu Jin, Zhihao Ma, Kebing Jin, Chen Chen, Chao Yu