基于svm的移动僵尸网络检测方法

Smita S. Wagh et al.
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引用次数: 0

摘要

僵尸网络对全球互联网安全构成重大威胁。一种新的模式正在演变,将僵尸网络从传统的桌面平台转移到具有持续复杂性和持久性的移动环境的移动平台。为了减轻移动僵尸网络造成的危害,就像在桌面环境中一样,检测是至关重要的。识别异常行为模式是用来发现僵尸网络的众多方法之一,它会产生最好的和最常见的发现。分析此类应用程序的运行特征是发现移动僵尸网络领域类似趋势的一种技术。本文研究了用于检测移动僵尸网络的基于主机和基于异常的方法。该方法从系统调用中提取异常行为的统计特征,并利用机器学习方法来识别它们。在现实环境中,所采用策略的有效性可以得到检验。建议的策略获得了良好的结果,包括低假阳性率和高实际检出率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SVM-Based Machine Learning Approach for Mobile Botnet Detection
Botnets pose a significant threat to global Internet security. A new pattern is evolving to shift botnets from conventional desktop to mobile platforms with continued sophistication and durability surroundings that move. To lessen the harm that mobile botnets pose, just like in the desktop environment, detection is crucial. Recognizing patterns of unusual behaviour is one of the many methods used to find these botnets, and it produces the best and most often findings. Analysing the running characteristics of this kind of application is one technique to spot similar tendencies in the mobile botnet area. This article examines host-based and anomaly-based methods for detecting mobile botnets. The suggested method extracts statistical characteristics of aberrant behaviour from system calls and utilises machine learning methods to identify them. In realistic settings, the effectiveness of the employed strategy can be tested. Excellent outcomes were attained by the suggested strategy, which included a low false positive rate and a high actual detection rate.
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