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Main Authors: Ma, Zhenyu, Song, Yuyang, Yang, Chunyi, Zhu, Jingyi, Yang, Letian, Jiang, Xukai
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.12717
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author Ma, Zhenyu
Song, Yuyang
Yang, Chunyi
Zhu, Jingyi
Yang, Letian
Jiang, Xukai
author_facet Ma, Zhenyu
Song, Yuyang
Yang, Chunyi
Zhu, Jingyi
Yang, Letian
Jiang, Xukai
contents LLM-based autonomous agents perform well on general reasoning tasks but still struggle to reliably use task structure, key constraints, and prior experience in complex real-world settings. We propose a case-based learning framework that converts experience from past tasks into reusable knowledge assets, allowing agents to transfer prior case experience to new tasks and perform more structured analysis. Unlike methods based mainly on pretrained knowledge or static prompts, our framework emphasizes extracting and reusing task-relevant knowledge, analytical prompts, and operational skills from real cases. We evaluate the method on a unified benchmark of six complex task categories and compare it with Zero-Shot, Few-Shot, Checklist Prompt, and Rule Memory baselines. Results show that our method achieves consistently strong performance across all tasks and matches or outperforms the best baseline in every case, with especially clear gains on more complex tasks. Further analysis shows that the advantage of case-based learning increases with task complexity, and that practical knowledge acquired by one agent can be reused by others. These findings suggest that case-based learning offers a promising path for building professional agents for real-world work.
format Preprint
id arxiv_https___arxiv_org_abs_2604_12717
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Transferable Expertise for Autonomous Agents via Real-World Case-Based Learning
Ma, Zhenyu
Song, Yuyang
Yang, Chunyi
Zhu, Jingyi
Yang, Letian
Jiang, Xukai
Artificial Intelligence
LLM-based autonomous agents perform well on general reasoning tasks but still struggle to reliably use task structure, key constraints, and prior experience in complex real-world settings. We propose a case-based learning framework that converts experience from past tasks into reusable knowledge assets, allowing agents to transfer prior case experience to new tasks and perform more structured analysis. Unlike methods based mainly on pretrained knowledge or static prompts, our framework emphasizes extracting and reusing task-relevant knowledge, analytical prompts, and operational skills from real cases. We evaluate the method on a unified benchmark of six complex task categories and compare it with Zero-Shot, Few-Shot, Checklist Prompt, and Rule Memory baselines. Results show that our method achieves consistently strong performance across all tasks and matches or outperforms the best baseline in every case, with especially clear gains on more complex tasks. Further analysis shows that the advantage of case-based learning increases with task complexity, and that practical knowledge acquired by one agent can be reused by others. These findings suggest that case-based learning offers a promising path for building professional agents for real-world work.
title Transferable Expertise for Autonomous Agents via Real-World Case-Based Learning
topic Artificial Intelligence
url https://arxiv.org/abs/2604.12717