Data Exfiltration Detection on Network Metadata with Autoencoders

Author:

Willems Daan1,Kohls Katharina2ORCID,van der Kamp Bob1,Vranken Harald23ORCID

Affiliation:

1. National Cyber Security Centre (NCSC), Ministry of Justice and Security, 2511 DP The Hague, The Netherlands

2. Institute for Computing and Information Sciences, Faculty of Science, Radboud University, 6525 AJ Nijmegen, The Netherlands

3. Faculty of Science, Department of Computer Science, Open Universiteit in The Netherlands, 6419 AT Heerlen, The Netherlands

Abstract

We designed a Network Exfiltration Detection System (NEDS) to detect data exfiltration as occurring in ransomware attacks. The NEDS operates on aggregated metadata, which is more privacy-friendly and allows analysis of large volumes of high-speed network traffic. The NEDS aggregates metadata from multiple, sequential sessions between pairs of hosts in a network, which captures exfiltration by both stateful and stateless protocols. The aggregated metadata include averages per session of both packet count, request entropy, duration, and payload size, as well as the average time between sequential sessions and the amount of aggregated sessions. The NEDS applies a number of autoencoder models with unsupervised learning to detect anomalies, where each autoencoder model targets different protocols. We trained the autoencoder models with real-life data collected at network sensors in the National Detection Network as operated by the National Cyber Security Centre in the Netherlands, and configured the detection threshold by varying the false positive rate. We evaluated the detection performance by injecting exfiltration over different channels, including DNS tunnels and uploads to FTP servers, web servers, and cloud storage. Our experimental results show that aggregation significantly increases detection performance of exfiltration that happens over longer time, most notably, DNS tunnels. Our NEDS can be applied to detect exfiltration either in near-real-time data analysis with limited false positive rates, or in captured data to aid in post-incident analysis.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

Reference31 articles.

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