SMSBotHunter: A Novel Anomaly Detection Technique to Detect SMS Botnets

Farnood Faghihi, M. Abadi, Asghar Tajoddin
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引用次数: 6

Abstract

Over the past few years, botnets have emerged as one of the most serious cybersecurity threats faced by individuals and organizations. After infecting millions of servers and workstations worldwide, botmasters have started to develop botnets for mobile devices. Mobile botnets use different mediums to communicate with their botmasters. Although significant research has been done to detect mobile botnets that use the Internet as their command and control (C&C) channel, little research has investigated SMS botnets per se. In order to fill this gap, in this paper, we first divide SMS botnets based on their characteristics into three families, namely, info stealer, SMS stealer, and SMS spammer. Then, we propose SMSBotHunter, a novel anomaly detection technique that detects SMS botnets using textual and behavioral features and one-class classification. We experimentally evaluate the detection performance of SMSBotHunter by simulating the behavior of human users and SMS botnets. The experimental results demonstrate that most of the SMS messages sent or received by info stealer and SMS spammer botnets can be detected using textual features exclusively. It is also revealed that behavioral features are crucial for the detection of SMS stealer botnets and will improve the overall detection performance.
SMSBotHunter:一种新的SMS僵尸网络异常检测技术
在过去的几年里,僵尸网络已经成为个人和组织面临的最严重的网络安全威胁之一。在感染了全球数以百万计的服务器和工作站之后,僵尸管理员开始为移动设备开发僵尸网络。移动僵尸网络使用不同的媒介与它们的僵尸主机进行通信。尽管已经进行了大量的研究来检测使用互联网作为其命令和控制(C&C)通道的移动僵尸网络,但很少有研究调查SMS僵尸网络本身。为了填补这一空白,本文首先根据短信僵尸网络的特征将其分为三类,即信息窃取者、短信窃取者和短信垃圾发送者。然后,我们提出了一种新的异常检测技术SMSBotHunter,该技术利用文本和行为特征以及一类分类来检测SMS僵尸网络。我们通过模拟人类用户和SMS僵尸网络的行为来实验评估SMSBotHunter的检测性能。实验结果表明,利用文本特征可以对信息窃取者和垃圾短信发送者僵尸网络发送或接收的大多数短信进行检测。研究还揭示了行为特征对短信窃取僵尸网络的检测至关重要,并将提高整体检测性能。
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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