MCPThreatHive:面向模型上下文协议生态系统的自动化威胁情报平台 / MCPThreatHive: Automated Threat Intelligence for Model Context Protocol Ecosystems
1️⃣ 一句话总结
这篇论文提出了一个名为MCPThreatHive的开源平台,它能够自动收集、分析、分类和可视化针对模型上下文协议生态系统的安全威胁,填补了现有工具在组合攻击建模、持续威胁情报和统一分类方面的空白。
The rapid proliferation of Model Context Protocol (MCP)-based agentic systems has introduced a new category of security threats that existing frameworks are inadequately equipped to address. We present MCPThreatHive, an open-source platform that automates the end-to-end lifecycle of MCP threat intelligence: from continuous, multi-source data collection through AI-driven threat extraction and classification, to structured knowledge graph storage and interactive visualization. The platform operationalizes the MCP-38 threat taxonomy, a curated set of 38 MCP-specific threat patterns mapped to STRIDE, OWASP Top 10 for LLM Applications, and OWASP Top 10 for Agentic Applications. A composite risk scoring model provides quantitative prioritization. Through a comparative analysis of representative existing MCP security tools, we identify three critical coverage gaps that MCPThreatHive addresses: incomplete compositional attack modeling, absence of continuous threat intelligence, and lack of unified multi-framework classification.
MCPThreatHive:面向模型上下文协议生态系统的自动化威胁情报平台 / MCPThreatHive: Automated Threat Intelligence for Model Context Protocol Ecosystems
这篇论文提出了一个名为MCPThreatHive的开源平台,它能够自动收集、分析、分类和可视化针对模型上下文协议生态系统的安全威胁,填补了现有工具在组合攻击建模、持续威胁情报和统一分类方面的空白。
源自 arXiv: 2604.13849