BSBA: Burst Series Based Approach for Identifying Fake Free-traffic

Sijia Li, Chang Liu, Zhuguo Li, Qingya Yang, Anlin Xu, Gaopeng Gou
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Abstract

In recent years, mobile traffic has gradually become a major part of network traffic. To attract customers, mobile network operators provide free-traffic, which is a preferential policy that is free of charge for specific application traffic. Since the emergence of free-traffic, fake free-traffic also appeared soon. Fake free-traffic is a malicious behavior, which helps attackers illegally use network resources and evade network resource charging. The appearance of fake free-traffic maliciously harms the interests of operators and disrupts the rules of network resource charging. Because of the uniqueness of free-traffic, it encapsulates a layer of the HTTP protocol in addition to the actual application communication protocol, existing studies on encrypted traffic analysis are not applicable to identify fake free-traffic. In this paper, we propose Burst Series Based Approach (BSBA), a novel method for identifying fake free-traffic. The key idea behind BSBA is to construct effective features by capturing the differences of burst series among fake free-traffic, free-traffic and non-free traffic, and combine the constructed features with machine learning algorithms to identify fake free-traffic. We collect a real-world traffic dataset and conduct evaluations to verify the effectiveness of the BSBA. Experiment results demonstrate that the BSBA achieves excellent performances (96.82% Accuracy, 96.46% Precision, 96.57% Recall and 96.51% F1-score) and is superior to the state-of-the-art methods.
基于突发级数的假自由流量识别方法
近年来,移动流量逐渐成为网络流量的重要组成部分。为了吸引客户,移动网络运营商提供免费流量,即针对特定应用流量免费的优惠政策。自免费流量出现以来,假免费流量也很快出现。虚假免费流量是一种恶意行为,可以帮助攻击者非法使用网络资源,逃避网络资源收费。虚假免费流量的出现恶意损害了运营商的利益,扰乱了网络资源收费规则。由于自由流量的唯一性,它除了封装了实际应用通信协议外,还封装了一层HTTP协议,现有的加密流量分析研究并不适用于识别虚假自由流量。本文提出了一种基于突发序列的伪自由流量识别方法(BSBA)。BSBA的核心思想是通过捕捉假自由流量、自由流量和非自由流量之间突发序列的差异,构建有效的特征,并将构建的特征与机器学习算法相结合,识别假自由流量。我们收集了真实世界的交通数据集,并进行了评估,以验证BSBA的有效性。实验结果表明,该方法取得了96.82%的正确率、96.46%的精密度、96.57%的召回率和96.51%的f1分数,优于现有的方法。
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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