解释逐包加密网络流量分类的深度学习模型

Luis Garcia, G. Bartlett, Srivatsan Ravi, Harun Ibrahim, W. Hardaker, Erik Kline
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引用次数: 0

摘要

机器学习越来越多地应用于网络流量分析,以帮助完成服务质量管理、趋势监控和安全等任务。深度学习的最新进展不仅可以对加密传输进行分类,还可以对每个数据包进行分类。端到端深度学习模型变得越来越普遍,因为它们易于使用,即开发人员不需要设计功能,以及它们明显的多功能性。然而,深度学习需要黑盒模型,这阻碍了调试和解释分类的能力。此外,深度学习的计算复杂性会导致不必要的延迟,这对于实时分类需求来说是一个问题。在本文中,我们提出了一种方法来解释黑箱,基于深度学习的加密网络流量分类模型,试图理解分类器在给定任务中关注的主要特征。我们评估了我们在最先进的深度学习分类技术上的方法,用于加密的每包分类,并演示了如何使用可解释性来调试和改进训练管道,同时显着减少深度学习模型的大小。我们提出了在保持可解释性的同时优化模型性能的未来方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explaining Deep Learning Models for Per-packet Encrypted Network Traffic Classification
Machine learning is increasingly applied to network traffic analysis to aid in tasks such as quality of service management, trend monitoring, and security. Recent advances in deep learning have enabled not only the classification of encrypted transits, but classification on a per-packet level. End-to-end deep learning models are becoming increasingly ubiq-uitous given their ease of use, i.e., developers do not need to engineer features, and their apparent versatility. However, deep learning entails black-box models that hinder the capability to debug and explain classifications. Moreover, the computational complexity of deep learning can incur unnecessary latency, which is problematic for real-time classification needs. In this paper, we propose a methodology to interpret black-box, deep learning-based encrypted network traffic classification models, with an attempt to understand the dominant features a classifier is focusing on for a given task. We evaluate our approach on state-of-the-art deep learning classification techniques for encrypted per-packet classification and demonstrate how interpretability can be used to debug and improve the training pipeline while significantly reducing the size of the deep learning model. We propose future directions toward optimizing model performance while maintaining explainability.
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