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arXiv 提交日期: 2026-02-18
📄 Abstract - Evolutionary Context Search for Automated Skill Acquisition

Large Language Models cannot reliably acquire new knowledge post-deployment -- even when relevant text resources exist, models fail to transform them into actionable knowledge without retraining. Retrieval-Augmented Generation attempts to bridge this gap by surfacing relevant documents at inference time, yet similarity-based retrieval often fails to identify context that actually improves task performance. We introduce Evolutionary Context Search (ECS), an evolutionary method that searches context combinations using accuracy on a small development set, requiring only inference calls without weight updates. ECS moves beyond semantic similarity to discover non-obvious context pairings that significantly boost performance. Our empirical results show that ECS improves BackendBench by 27\% and $\tau$-bench airline by 7\%. The evolved contexts are model-agnostic, as those evolved with Gemini-3-Flash transfer effectively to Claude Sonnet and DeepSeek. This suggests that ECS opens a path toward automated context discovery for skill acquisition -- an efficient alternative to manual prompt engineering or costly fine-tuning.

顶级标签: llm agents model evaluation
详细标签: retrieval-augmented generation context search evolutionary algorithm automated skill acquisition prompt engineering 或 搜索:

用于自动化技能获取的进化上下文搜索 / Evolutionary Context Search for Automated Skill Acquisition


1️⃣ 一句话总结

这篇论文提出了一种名为‘进化上下文搜索’的新方法,它通过自动搜索和组合不同的文本上下文(而非依赖传统的语义相似性检索),来帮助大语言模型在无需重新训练或手动设计提示的情况下,高效地获取新知识并提升任务性能。

源自 arXiv: 2602.16113