cs.AI updates on arXiv.org 07月31日 12:48
A Systematic Literature Review on Detecting Software Vulnerabilities with Large Language Models
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本文对LLM在软件漏洞检测中的应用进行了系统文献综述,分析了227项研究,分类讨论了任务设定、输入表示、系统架构和适应技术,提出了漏洞检测方法的精细分类,识别了关键局限,并展望了未来研究方向。

arXiv:2507.22659v1 Announce Type: cross Abstract: The increasing adoption of Large Language Models (LLMs) in software engineering has sparked interest in their use for software vulnerability detection. However, the rapid development of this field has resulted in a fragmented research landscape, with diverse studies that are difficult to compare due to differences in, e.g., system designs and dataset usage. This fragmentation makes it difficult to obtain a clear overview of the state-of-the-art or compare and categorize studies meaningfully. In this work, we present a comprehensive systematic literature review (SLR) of LLM-based software vulnerability detection. We analyze 227 studies published between January 2020 and June 2025, categorizing them by task formulation, input representation, system architecture, and adaptation techniques. Further, we analyze the datasets used, including their characteristics, vulnerability coverage, and diversity. We present a fine-grained taxonomy of vulnerability detection approaches, identify key limitations, and outline actionable future research opportunities. By providing a structured overview of the field, this review improves transparency and serves as a practical guide for researchers and practitioners aiming to conduct more comparable and reproducible research. We publicly release all artifacts and maintain a living repository of LLM-based software vulnerability detection studies.

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LLM 软件漏洞检测 系统综述 研究方法 未来展望
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