【24h】

Mobi-Watchdog: You Can Steal, But You Can't Run!

机译:Mobi-Watchdog:你可以偷,但你不能跑!

获取原文

摘要

Recent years have witnessed widespread use of mobile devices such as cell phones, laptops, and PDAs. In this paper, we propose an architecture called Mobi-Watchdog to detect mobility anomalies of mobile devices in wireless networks that track their locations regularly. Given the past mobility records of a mobile device, Mobi-Watchdog uses clustering techniques to identify the high-level structure of its mobility and then trains a HHMM (hierarchical hidden Markov model). Mobi-Watchdog raises an alert by requesting the device holder to reauthenticate himself when it finds an observed mobility trace significantly deviates from the trained model. The time complexity of the original generalized Baum-Welch algorithm [4], which is used for HHMM parameter reestimation, scales linearly with T~(3), where T is the number of locations in an observed sequence. Such a high computational cost can significantly impede deployment of Mobi-Watchdog in large-scale wireless networks in practice. To achieve better scalability, we modify this algorithm to make it scale linearly with T instead. Experimental results with realistic mobility traces demonstrate that Mobi-Watchdog detects mobility anomalies with high probability and reasonably low false alarm rates. We also show that Mobi-Watchdog has very low computational overhead, which makes it a viable candidate for mobility anomaly detection in large wireless networks.
机译:近年来,目睹了诸如手机,笔记本电脑和PDA等移动设备的广泛使用。在本文中,我们提出了一种称为Mobi-Watchdog的架构,以便在定期跟踪其位置的无线网络中的移动设备的移动性异常。鉴于移动设备的过去移动记录,Mobi-WatchDog使用聚类技术来识别其移动性的高级结构,然后列举HHMM(分层隐藏的Markov模型)。 Mobi-WatchDog通过请求设备持有人在发现观察到的移动迹线时提出了一种警报,以便显着偏离训练的模型。原始广义BAUM-Welch算法[4]的时间复杂性用于HHMM参数再现,与T〜(3)线性缩放,其中T是观察到的序列中的位置数。这种高计算成本可以在实践中显着地阻碍了大规模无线网络中Mobi-Watchdog的部署。为了实现更好的可扩展性,我们修改了该算法,使其与T相反地绘制。具有现实移动性迹线的实验结果表明,Mobi-Watchdog以高概率和相当低的误报率检测到移动性异常。我们还表明,Mobi-Watchdog的计算开销具有很低,这使其成为大型无线网络中移动异常检测的可行候选者。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号