Plan Before Search: Search Agents Need Plan 事件

SHUTDOWN2026-05-28影响: LOW

Plan Before Search: Search Agents Need Plan arXiv:2605.28354v1 Announce Type: new Abstract: Training large language models as retrieval-augmented reasoning agents typically combines reinforcement learning with an SFT cold start distilled from a stronger model. However, this paradigm overlooks two fundamental factors: the dependency structure among sub-skills, and the possibility that distillation is not the only route to capability acquisition. We study this through Plan, a structured agentic b