Utilising Flow Aggregation to Classify Benign Imitating Attacks
Hanan Hindy, Robert Atkinson, Christos Tachtatzis, Ethan Bayne,, Miroslav Bures, Xavier Bellekens

TL;DR
This paper introduces flow aggregation-based features for machine learning models to improve detection of cyber-attacks that imitate benign traffic, demonstrating enhanced accuracy on the CICIDS2017 dataset.
Contribution
The study proposes a novel feature extraction method using flow aggregation to better identify attacks mimicking benign behavior.
Findings
Flow aggregation features improve attack detection accuracy.
New features outperform traditional ones on CICIDS2017 dataset.
Method enhances detection of sophisticated, benign-imitating attacks.
Abstract
Cyber-attacks continue to grow, both in terms of volume and sophistication. This is aided by an increase in available computational power, expanding attack surfaces, and advancements in the human understanding of how to make attacks undetectable. Unsurprisingly, machine learning is utilised to defend against these attacks. In many applications, the choice of features is more important than the choice of model. A range of studies have, with varying degrees of success, attempted to discriminate between benign traffic and well-known cyber-attacks. The features used in these studies are broadly similar and have demonstrated their effectiveness in situations where cyber-attacks do not imitate benign behaviour. To overcome this barrier, in this manuscript, we introduce new features based on a higher level of abstraction of network traffic. Specifically, we perform flow aggregation by grouping…
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