Zero Day Threat Detection Using Graph and Flow Based Security Telemetry
Christopher Redino, Dhruv Nandakumar, Robert Schiller, Kevin Choi,, Abdul Rahman, Edward Bowen, Matthew Weeks, Aaron Shaha, Joe Nehila

TL;DR
This paper presents a deep learning-based Zero Day Threat detection system that uses network flow telemetry and graph features to identify novel cyber threats in near real-time, reducing false positives and response time.
Contribution
The authors introduce a scalable, generalizable deep learning architecture with dual-autoencoders for anomaly and novelty detection, and provide a new labeled cyber attack dataset.
Findings
High precision and recall on large-scale datasets
Effective detection of complex threats with low false positives
Near real-time detection reduces response time
Abstract
Zero Day Threats (ZDT) are novel methods used by malicious actors to attack and exploit information technology (IT) networks or infrastructure. In the past few years, the number of these threats has been increasing at an alarming rate and have been costing organizations millions of dollars to remediate. The increasing expansion of network attack surfaces and the exponentially growing number of assets on these networks necessitate the need for a robust AI-based Zero Day Threat detection model that can quickly analyze petabyte-scale data for potentially malicious and novel activity. In this paper, the authors introduce a deep learning based approach to Zero Day Threat detection that can generalize, scale, and effectively identify threats in near real-time. The methodology utilizes network flow telemetry augmented with asset-level graph features, which are passed through a dual-autoencoder…
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Taxonomy
TopicsNetwork Security and Intrusion Detection · Information and Cyber Security · Anomaly Detection Techniques and Applications
