Few-Shot Open-Set Traffic Classification Based on Self-Supervised Learning

Ji Li, Chunxiang Gu, Luan Luan, Fushan Wei, Wenfen Liu
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引用次数: 2

Abstract

Encrypted traffic classification is a key technology for network monitoring and management, and its recent research results are mostly based on deep learning. Due to the difficulty in obtaining sufficient labeled data, few-shot traffic classification has received considerable attention. However, most of the existing results have two defects. First, they are mostly based on the assumption of a labeled base dataset for pre-training. Second, they neglect the problem of unknown traffic discovery under open-set conditions. In this paper, aiming at the problem of few-shot open-set encrypted traffic classification, a corresponding framework FSOSTC is constructed under the condition of unsupervised pre-training. Two data augmentation methods for packet feature map are proposed to assist the pre-training through self-supervised learning, which is combined with parameter fine-tuning, unknown discovery and class extension strategies. Experiments on public datasets verify the effectiveness of FSOSTC. For the few-shot open-set malicious traffic classification task, the CSA reaches 95.41% and the AUROC reaches 0.8664.
基于自监督学习的少样本开集流量分类
加密流分类是网络监控和管理的关键技术,近年来的研究成果多基于深度学习。由于难以获得足够的标记数据,小样本流量分类受到了广泛的关注。然而,现有的研究结果大多存在两个缺陷。首先,它们大多基于对标记基础数据集的假设进行预训练。其次,忽略了开放条件下的未知流量发现问题。本文针对少镜头开集加密流量分类问题,在无监督预训练条件下构造了相应的框架FSOSTC。结合参数微调、未知发现和类扩展策略,提出了两种包特征映射的数据增强方法,通过自监督学习辅助预训练。在公共数据集上的实验验证了FSOSTC的有效性。对于少射次开集恶意流分类任务,CSA达到95.41%,AUROC达到0.8664。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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