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E-HUNF: Explainable Hybrid Unsupervised Network Forensics for Robust Cybercrime Anomaly Detection


Citation

Sangeetha, A. and Alaguraja, J. James and Latip, Rohaya (2026) E-HUNF: Explainable Hybrid Unsupervised Network Forensics for Robust Cybercrime Anomaly Detection. International Journal of Electronics and Telecommunications, 72 (2). pp. 1-8. ISSN 2081-8491; eISSN: 2300-1933

Abstract

Anomaly-based network forensics is very important for finding new types of cybercrime that don’t have reliable signatures or labelled training data. But most unsupervised detectors only look at one view of normality and don’t give any forensic interpretability. This study talks about E-HUNF, an Explainable Hybrid Unsupervised Framework that can find crimes in network traffic. E-HUNF uses a manifold-aware, centre-regularized auto encoder to get compact latent representations of flows. It then uses these to get three different anomaly scores based on reconstruction error, latent density, and distance from a learnt normalcy centre. These scores are combined into a hybrid anomaly score with adaptive, percentile-based thresholding to help people make judgements that are mindful of risk. An explainability layer blends local linear surrogates with prototype retrieval to show how each alert’s features and historical examples are related. When tested on a standard network-forensics dataset with benign, DoS, Probe/Scan, R2L/U2R, and Botnet traffic, E-HUNF got an accuracy of 0.987, an F1-Score of 0.978, a ROC-AUC of 0.995, and a PR-AUC of 0.993. It did better than Deep SVDD, DAGMM, VAE-AD, and Isolation Forest. Even for small R2L/U2R attacks, the class-wise F1-Scores stay above 0.937. Ablation results show that adding density and boundary cues to reconstruction improves the F1 score by 3.3% over reconstruction-only versions. These results show that E-HUNF has the best detection performance and the most useful forensic transparency for modern cyber-defence operations.


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Additional Metadata

Item Type: Article
Subject: Computer Networks and Communications
Subject: Electrical and Electronic Engineering
Divisions: Faculty of Computer Science and Information Technology
DOI Number: https://doi.org/10.24425/ijet.2026.157911
Publisher: Polska Akademia Nauk
Keywords: Cybercrimes; Explainable Hybrid UnsupervisedFramework; Risk-aware decisions; Percentile-based threshold-ing; Forensic interpretability
Sustainable Development Goals (SDGs): SDG 9: Industry, Innovation and Infrastructure, SDG 16: Peace, Justice and Strong Institutions, SDG 11: Sustainable Cities and Communities
Depositing User: Ms. Siti Radziah Mohamed@mahmod
Date Deposited: 23 Jun 2026 06:34
Last Modified: 23 Jun 2026 06:34
Altmetrics: http://www.altmetric.com/details.php?domain=psasir.upm.edu.my&doi=10.24425/ijet.2026.157911
URI: http://psasir.upm.edu.my/id/eprint/126372
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