Self-Evolving World Models for LLM Agent Planning
The paper introduces WorldEvolver, a framework that equips long-horizon LLM agents with reliable foresight by revising deployment-time context without modifying model parameters. It addresses the issue of unreliable predictions degrading decision-making through a self-evolving approach that enhances predictive fidelity and planning performance.