The Attention-Based Autoencoder for Network Traffic Classification with Interpretable Feature Representation

Author:

Cui Jun1,Bai Longkun2,Zhang Xiaofeng2,Lin Zhigui2,Liu Qi3

Affiliation:

1. School of Life Sciences, Tiangong University, Tianjin 300380, China

2. School of Electronics and Information Engineering, Tiangong University, Tianjin 300380, China

3. School of Computer and Information Engineering, Tianjin Chengjian University, Tianjin 300380, China

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 named the attention mechanism autoencoder (AMAE). The AMAE model extracts the global spatial structural features of network traffic through attention mechanisms and employs an autoencoder to extract local structural features and perform dimensionality reduction. This process maps different network traffic features into one-dimensional coordinate systems in the form of spectra, termed FlowSpectrum. The spectra of different network traffic represent different intervals in the coordinate system. This paper tests the interpretability and classification performance of network traffic features of the AMAE model using the ISCX-VPN2016 dataset. Experimental results demonstrate that by analyzing the overall distribution of attention weights and local weight values of network traffic, the model effectively explains the differences in the spectral representation intervals of different types of network traffic. Furthermore, our approach achieves the highest classification accuracy of up to 100% for non-VPN-encrypted traffic and 99.69% for VPN-encrypted traffic, surpassing existing traffic classification schemes.

Publisher

MDPI AG

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