Exploring the Integration of Differential Privacy in Cybersecurity Analytics: Balancing Data Utility and Privacy in Threat Intelligence
By: Brahim Khalil Sedraoui , Abdelmadjid Benmachiche , Amina Makhlouf and more
Potential Business Impact:
Keeps secret computer attack clues safe.
To resolve the acute problem of privacy protection and guarantee that data can be used in the context of threat intelligence, this paper considers the implementation of Differential Privacy (DP) in cybersecurity analytics. DP, which is a sound mathematical framework, ensures privacy by adding a controlled noise to data outputs and thus avoids sensitive information disclosure even with auxiliary datasets. The use of DP in Security Information and Event Management (SIEM) systems is highlighted, and it can be seen that DP has the capability to protect event log and threat data analysis without interfering with the analytical efficiency. The utility versus privacy trade-offs linked to the maximization of the epsilon parameter, which is one of the critical components of DP mechanisms, is pointed out. The article shows the transformative power of DP in promoting safe sharing of data and joint threat intelligence through real-world systems and case studies. Finally, this paper makes DP one of the key strategies to improve privacy-preserving analytics in the field of cybersecurity.
Similar Papers
Advancing privacy in learning analytics using differential privacy
Cryptography and Security
Keeps student data private while still learning.
A Comprehensive Guide to Differential Privacy: From Theory to User Expectations
Cryptography and Security
Protects your private information when data is used.
How to DP-fy Your Data: A Practical Guide to Generating Synthetic Data With Differential Privacy
Cryptography and Security
Creates fake data that protects real people's secrets.