AI RESEARCH

Graph World Models: Concepts, Taxonomy, and Future Directions

arXiv CS.AI

ArXi:2604.27895v1 Announce Type: new As one of the mainstream models of artificial intelligence, world models allow agents to learn the representation of the environment for efficient prediction and planning. However, classical world models based on flat tensors face several key problems, including noise sensitivity, error accumulation and weak reasoning. To address these limitations, many recent studies use graph structure to decompose the environment into entity nodes and interactive edges, and model virtual environments in a structured space.