Understanding Rollout Error in Graph World Models
arXiv:2606.27780v1 Announce Type: new Abstract: World models are often used for planning by rolling learned dynamics forward. Many planning environments, however, are not vectors or images; they are graphs of agents, tools, skills, routes, and dependencies. In these settings, a local prediction error may stay local or spread through the graph, and the failure mode changes again when edges are predicted rather than fixed. This paper studies long-horizon rollout error in Graph World Models (GWMs)....
arXiv cs.AI
·Xinyuan Song, Zekun Cai
·
// relacionados
Leia também
Blog
HP accelerates enterprise workflows with OpenAI Frontier
Blog
Open Models, Closed Environments: Palantir Brings Secure AI to US Agencies With NVIDIA Nemotron
Blog
Claude Code runs a GitHub repo's hidden malware without verification, giving attackers full control
Blog