paperarXivTrust 82 · PrimaryPublished 4d agoLive · 3d ago
Self-Evolving World Models for LLM Agent Planning
World models offer a principled way to equip long-horizon LLM agents with foresight: predictions of action consequences before execution. However, unreliable foresight can be ignored, misused, or even degrade downstream decision-making. In this paper, we introduce WorldEvolver, a self-evolving world model framework that revises its deployment-time context while keeping the downstream agent and all model parameters frozen. WorldEvolver integrates three modules: (i) Episodic Memory, which exploits real action transitions through retrieval-based simulation; (ii) Semantic Memory, which extracts pe
Lineage graph
Paper → model → repo connections mined from source citations (Tier-1 exact match).
Has model
Implements
Covers
Implements (incoming)
Related across the graph
repogunawan1996/world-forge-ainewsPredicting model behavior before release by simulating deploymentnewsAlibaba's model never trained as an agent — and improved agent performance across seven benchmarksrepojmerelnyc/Photo-agentsmodelAgentCore-8BrepoAlanFokCo/agentscope-gorepoTeleAI-UAGI/Awesome-Agent-MemoryrepoNoshkoto/Noshyrepoagent-tools
