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arXiv 提交日期: 2026-01-11
📄 Abstract - Dr. Zero: Self-Evolving Search Agents without Training Data

As high-quality data becomes increasingly difficult to obtain, data-free self-evolution has emerged as a promising paradigm. This approach allows large language models (LLMs) to autonomously generate and solve complex problems, thereby improving their reasoning capabilities. However, multi-turn search agents struggle in data-free self-evolution due to the limited question diversity and the substantial compute required for multi-step reasoning and tool using. In this work, we introduce Dr. Zero, a framework enabling search agents to effectively self-evolve without any training data. In particular, we design a self-evolution feedback loop where a proposer generates diverse questions to train a solver initialized from the same base model. As the solver evolves, it incentivizes the proposer to produce increasingly difficult yet solvable tasks, thus establishing an automated curriculum to refine both agents. To enhance training efficiency, we also introduce hop-grouped relative policy optimization (HRPO). This method clusters structurally similar questions to construct group-level baselines, effectively minimizing the sampling overhead in evaluating each query's individual difficulty and solvability. Consequently, HRPO significantly reduces the compute requirements for solver training without compromising performance or stability. Extensive experiment results demonstrate that the data-free Dr. Zero matches or surpasses fully supervised search agents, proving that complex reasoning and search capabilities can emerge solely through self-evolution.

顶级标签: llm agents model training
详细标签: self-evolution search agents policy optimization data-free learning automated curriculum 或 搜索:

Dr. Zero:无需训练数据的自我进化搜索智能体 / Dr. Zero: Self-Evolving Search Agents without Training Data


1️⃣ 一句话总结

这篇论文提出了一个名为Dr. Zero的框架,能让AI搜索智能体在没有外部训练数据的情况下,通过一个‘出题者’和‘解题者’相互促进、自动生成并解决越来越难问题的自我进化循环,来高效地提升其复杂推理和搜索能力。

源自 arXiv: 2601.07055