On Collaboration and Automation in the Context of Threat Detection and Response with Privacy-Preserving Features

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Authors

NITZ Lasse GURABI MEHDI Akbari ČERMÁK Milan ŽÁDNÍK Martin KARPUK David DRICHEL Arthur SCHÄFER Sebastian HOLMES Benedikt

Year of publication 2025
Type Article in Periodical
Magazine / Source Digital Threats: Research and Practice
MU Faculty or unit

Institute of Computer Science

Citation
web https://dl.acm.org/doi/10.1145/3707651
Doi http://dx.doi.org/10.1145/3707651
Keywords Cybersecurity; Collaborative detection and response; Incident response automation; Information sharing; Privacy
Description Organizations and their security operation centers often struggle to detect and respond effectively to an extensive quantity of ever-evolving cyberattacks. While collaboration, such as threat intelligence sharing between security teams, and response automation are often discussed in the cybersecurity community, issues like data sensitivity and confidence in detection may hinder their adoption. This work investigates the potentials and challenges of collaboration and automation to enhance incident response processes. We propose a reference architecture for data sharing in threat detection and response, aiming to boost collaborative and automated efforts across organizations while also considering privacy-preserving features. To address these challenges and potentials, we discuss how such a framework could enhance current response processes within and between organizations, validated with results in local attack detection, incident response, and data sharing.
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