2024
DOI: 10.3390/sym16050589
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The Attention-Based Autoencoder for Network Traffic Classification with Interpretable Feature Representation

Jun Cui,
Longkun Bai,
Xiaofeng Zhang
et al.

Abstract: Network traffic classification is crucial for identifying network applications and defending against network threats. Traditional traffic classification approaches struggle to extract structural features and suffer from poor interpretability of feature representations. The high symmetry between network traffic classification and its interpretable feature representation is vital for network traffic analysis. To address these issues, this paper proposes a traffic classification and feature representation model n… Show more

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