AI RESEARCH
Training LLM Agents for Spontaneous, Reward-Free Self-Evolution via World Knowledge Exploration
arXiv CS.AI
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ArXi:2604.18131v1 Announce Type: new Most agents today ``self-evolve'' by following rewards and rules defined by humans. However, this process remains fundamentally dependent on external supervision; without human guidance, the evolution stops. In this work, we train agents to possess an intrinsic meta-evolution capability to spontaneously learn about unseen environments prior to task execution. To instill this ability, we design an outcome-based reward mechanism that measures how much an agent's self-generated world knowledge improves its success rate on downstream tasks.