🌙

面向国际暗网的跨语言网络安全分析:基于对抗深度表示学习

Cross-Lingual Cybersecurity Analytics in the International Dark Web with Adversarial Deep Representation Learning

MIS Quarterly · 2022
被引 46
人大 A+FT50UTD24ABS 4*

中文导读

提出跨语言黑客资产检测方法CLHAD,利用对抗深度表示学习从英文数据迁移知识,自动检测俄、法、意等非英语暗网中的恶意资产,并给出安全管理启示。

Abstract

International dark web platforms operating within multiple geopolitical regions and languages host a myriad of hacker assets such as malware, hacking tools, hacking tutorials, and malicious source code. Cybersecurity analytics organizations employ machine learning models trained on human-labeled data to automatically detect these assets and bolster their situational awareness. However, the lack of human-labeled training data is prohibitive when analyzing foreign-language dark web content. In this research note, we adopt the computational design science paradigm to develop a novel IT artifact for cross-lingual hacker asset detection (CLHAD). CLHAD automatically leverages the knowledge learned from English content to detect hacker assets in non-English dark web platforms. CLHAD encompasses a novel Adversarial deep representation learning (ADREL) method, which generates multilingual text representations using generative adversarial networks (GANs). Drawing upon the state of the art in cross-lingual knowledge transfer, ADREL is a novel approach to automatically extract transferable text representations and facilitate the analysis of multilingual content. We evaluate CLHAD on Russian, French, and Italian dark web platforms and demonstrate its practical utility in hacker asset profiling, and conduct a proof-of-concept case study. Our analysis suggests that cybersecurity managers may benefit more from focusing on Russian to identify sophisticated hacking assets. In contrast, financial hacker assets are scattered among several dominant dark web languages. Managerial insights for security managers are discussed at operational and strategic levels.

网络安全暗网分析跨语言学习对抗生成网络黑客资产检测