Controlled Data Sharing for Collaborative Predictive Blacklisting

Although sharing data across organizations is often advocated as a promising way to enhance cybersecurity, collaborative initiatives are rarely put into practice owing to confidentiality, trust, and liability challenges. In this paper, we investigate whether collaborative threat mitigation can be realized via a controlled data sharing approach, whereby organizations make informed decisions as to whether or not, and how much, to share. Using appropriate cryptographic tools, entities can estimate the benefits of collaboration and agree on what to share in a privacy-preserving way, without having to disclose their datasets. We focus on collaborative predictive blacklisting, i.e., forecasting attack sources based on one’s logs and those contributed by other organizations. We study the impact of different sharing strategies by experimenting on a real-world dataset of two billion suspicious IP addresses collected from Dshield over two months. We find that controlled data sharing yields up to 105% accuracy improvement on average, while also reducing the false positive rate.

Speaker Details

Emiliano De Cristofaro is a Senior Lecturer at University College London. Prior to joining UCL, he was a Research Scientist at PARC (a Xerox company). He received a PhD in Networked Systems from the University of California Irvine, advised – mostly while running on the beach – by Gene Tsudik. His research interests include privacy technologies, applied cryptography, and web security/privacy measurements. In 2012, he received an Excellency Award from PARC’s Computer Science Lab. He co-chaired the Privacy Enhancing Technologies Symposium (PETS) in 2013-2014, and the Workshop on Genome Privacy and Security (GenoPri) in 2015. Emiliano maintains an updated homepage at https://emilianodc.com.

Date:
Speakers:
Emiliano De Cristofaro
Affiliation:
UCL
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