CRLGCOMLMay 14, 2025

Cybersecurity threat detection based on a UEBA framework using Deep Autoencoders

arXiv:2505.11542v22 citationsh-index: 11AIM Math
Originality Incremental advance
AI Analysis

This addresses the problem of detecting security threats like data leaks or system hijacking for enterprises, offering an incremental improvement by integrating explainability into existing systems.

The study tackled cybersecurity threat detection by developing an explainable UEBA framework using Deep Autoencoders and Doc2Vec to process numerical and textual features, achieving effective detection of real and synthetic anomalies with explainable results.

User and Entity Behaviour Analytics (UEBA) is a broad branch of data analytics that attempts to build a normal behavioural profile in order to detect anomalous events. Among the techniques used to detect anomalies, Deep Autoencoders constitute one of the most promising deep learning models on UEBA tasks, allowing explainable detection of security incidents that could lead to the leak of personal data, hijacking of systems, or access to sensitive business information. In this study, we introduce the first implementation of an explainable UEBA-based anomaly detection framework that leverages Deep Autoencoders in combination with Doc2Vec to process both numerical and textual features. Additionally, based on the theoretical foundations of neural networks, we offer a novel proof demonstrating the equivalence of two widely used definitions for fully-connected neural networks. The experimental results demonstrate the proposed framework capability to detect real and synthetic anomalies effectively generated from real attack data, showing that the models provide not only correct identification of anomalies but also explainable results that enable the reconstruction of the possible origin of the anomaly. Our findings suggest that the proposed UEBA framework can be seamlessly integrated into enterprise environments, complementing existing security systems for explainable threat detection.

Foundations

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