大语言模型赋能区块链服务安全研究综述:现状、挑战与机遇(特邀)OA
Large Language Models Empowering Blockchain Service Security:A Comprehensive Survey of Status,Challenges,and Opportunities(Invited)
区块链已逐渐发展成支撑数字经济的重要基础设施,但其匿名性、跨链互操作性、多方参与等特征,导致诈骗、洗钱与攻击等安全事件频发,严重威胁生态系统的稳定与合规.尽管现有分析工具与方法在区块链服务安全领域取得了一定进展,但仍普遍存在泛化能力不足、推理能力有限、难以适应复杂业务逻辑演化等问题.与此同时,生成式大语言模型(LLM)的快速发展正在深刻重塑服务计算范式,其在自然语言理解、知识推理与多模态融合等方面的优势,为区块链服务安全研究提供了新的思路与技术路径.系统梳理LLM在事前智能合约审计、事中异常行为检测、事后多链行为关联任务中的应用进展,归纳其优势与局限,总结LLM赋能区块链服务安全的典型实践.最后,展望LLM赋能区块链服务安全面临的开放科学问题与未来研究方向,为构建可信、可解释、高效的区块链服务计算与治理体系提供参考.
Blockchain has gradually evolved into a critical infrastructure that supports the digital economy.However,its inherent characteristics such as anonymity,cross-chain interoperability,and multi-party participation have led to frequent security incidents,including fraud,money laundering,and cyberattacks,which pose serious threats to the stability and compliance of the blockchain ecosystem.Although existing analytical tools and methods have made notable progress in blockchain service security,they suffer from limited generalizability,insufficient reasoning capabilities,and poor adaptability to the evolution of complex business logic.The rapid development of generative Large Language Model(LLM)has significantly reshaped the service computing paradigm.With their strong capabilities in natural language understanding,knowledge reasoning,and multimodal integration,LLM provide new perspectives and technical pathways for research on blockchain service security.This paper systematically reviews the progress of LLM applications in three major areas:pre-event smart contract auditing,in-event anomaly detection,and post-event cross-chain behavior correlation.Further,it summarizes their advantages and limitations and highlights representative practices of LLM-enabled blockchain security.Finally,open research challenges and future directions are discussed,aiming to provide insights for building a trustworthy,interpretable,and efficient framework for blockchain service computing and governance.
林丹;卢顺峰;刘姿妍;张博昭;何龙;蒋子规;吴嘉婧;郑子彬
中山大学软件工程学院,广东珠海 519082||广东省区块链工程技术研究中心,广东珠海 519082中山大学软件工程学院,广东珠海 519082中山大学软件工程学院,广东珠海 519082中山大学软件工程学院,广东珠海 519082中山大学软件工程学院,广东珠海 519082中山大学软件工程学院,广东珠海 519082中山大学软件工程学院,广东珠海 519082||广东省区块链工程技术研究中心,广东珠海 519082中山大学软件工程学院,广东珠海 519082||广东省区块链工程技术研究中心,广东珠海 519082
信息技术与安全科学
区块链大语言模型服务安全智能合约审计异常行为检测多链行为关联
blockchainLarge Language Model(LLM)service securitysmart contract auditingabnormal behavior detectionmulti-chain behavior association
《计算机工程》 2026 (1)
1-21,21
国家重点研发计划(2023YFB2704700)国家自然科学基金(62502548,62372485,623B2102,62472457)广东省自然科学基金(2023A1515011336).
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