cs.AI updates on arXiv.org 10月08日 12:06
自动漏洞修复:挑战与应对
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本文探讨了软件漏洞激增背景下自动漏洞修复(AVR)的挑战,分析了当前基于序列生成和大型语言模型的方法所面临的困难,如数据缺乏和验证难题。

arXiv:2510.05480v1 Announce Type: new Abstract: The exponential increase in software vulnerabilities has created an urgent need for automatic vulnerability repair (AVR) solutions. Recent research has formulated AVR as a sequence generation problem and has leveraged large language models (LLMs) to address this problem. Typically, these approaches prompt or fine-tune LLMs to generate repairs for vulnerabilities directly. Although these methods show state-of-the-art performance, they face the following challenges: (1) Lack of high-quality, vulnerability-related reasoning data. Current approaches primarily rely on foundation models that mainly encode general programming knowledge. Without vulnerability-related reasoning data, they tend to fail to capture the diverse vulnerability repair patterns. (2) Hard to verify the intermediate vulnerability repair process during LLM training. Existing reinforcement learning methods often leverage intermediate execution feedback from the environment (e.g., sandbox-based execution results) to guide reinforcement learning training. In contrast, the vulnerability repair process generally lacks such intermediate, verifiable feedback, which poses additional challenges for model training.

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自动漏洞修复 软件漏洞 大型语言模型 数据验证 序列生成
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