Looking Beyond IoCs: Automatically Extracting Attack Patterns from External CTI


연구 분야: Safety



학회: RAID '23: Proceedings of the 26th International Symposium on Research in Attacks, Intrusions and Defenses


초록

Public and commercial organizations extensively share cyberthreat intelligence (CTI) to prepare systems to defend against existing and emerging cyberattacks. However, traditional CTI has primarily focused on tracking known threat indicators such as IP addresses and domain names, which may not provide long-term value in defending against evolving attacks. To address this challenge, we propose to use more robust threat intelligence signals called attack patterns. LADDER is a knowledge extraction framework that can extract text-based attack patterns from CTI reports at scale. The framework characterizes attack patterns by capturing the phases of an attack in Android and enterprise networks and systematically maps them to the MITRE ATT&CK pattern framework. LADDER can be used by security analysts to determine the presence of attack vectors related to existing and emerging threats, enabling them to prepare defenses proactively. We also present several use cases to demonstrate the application of LADDER in real-world scenarios. Finally, we provide a new, open-access benchmark malware dataset to train future cyberthreat intelligence models.


Author Profile
Md Tanvirul Alam

Rochester Institute of Technology USA

United States
Author Profile
Dipkamal Bhusal

Rochester Institute of Technology USA

United States
Author Profile
Youngja Park

IBM Research USA

United States

📄 논문 정보

발행 연도 2023년
인용수 36
출판 국가 United States
사이트 ACM
좋아요 수 0

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