基于结构化异构信息网络的Android恶意软件智能检测系统HinDroid

Shifu Hou, Yanfang Ye, Yangqiu Song, Melih Abdulhayoglu
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引用次数: 223

摘要

随着Android恶意软件的爆炸式增长,以及其对智能手机用户造成的严重损害,Android恶意软件的检测在网络安全中变得越来越重要。越来越复杂的Android恶意软件需要新的防御技术,能够抵御新的威胁,更难以逃避。在本文中,为了检测Android恶意软件,我们不再仅仅使用API调用,而是进一步分析它们之间的不同关系,并创建更高层次的语义,这使得攻击者需要付出更多的努力来逃避检测。我们将Android应用程序、相关api以及它们之间丰富的关系表示为一个结构化的异构信息网络(HIN)。然后,我们使用基于元路径的方法来表征应用程序和api的语义相关性。我们使用每个元路径来制定Android应用程序的相似性度量,并使用多内核学习来聚合不同的相似性。然后,每个元路径被学习算法自动加权以进行预测。据我们所知,这是第一个使用结构化HIN进行Android恶意软件检测的工作。在科摩多云安全中心采集的真实样本上进行综合实验,比较各种恶意软件检测方法。有希望的实验结果表明,我们开发的系统HinDroid优于其他替代的Android恶意软件检测技术。
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HinDroid: An Intelligent Android Malware Detection System Based on Structured Heterogeneous Information Network
With explosive growth of Android malware and due to the severity of its damages to smart phone users, the detection of Android malware has become increasingly important in cybersecurity. The increasing sophistication of Android malware calls for new defensive techniques that are capable against novel threats and harder to evade. In this paper, to detect Android malware, instead of using Application Programming Interface (API) calls only, we further analyze the different relationships between them and create higher-level semantics which require more effort for attackers to evade the detection. We represent the Android applications (apps), related APIs, and their rich relationships as a structured heterogeneous information network (HIN). Then we use a meta-path based approach to characterize the semantic relatedness of apps and APIs. We use each meta-path to formulate a similarity measure over Android apps, and aggregate different similarities using multi-kernel learning. Then each meta-path is automatically weighted by the learning algorithm to make predictions. To the best of our knowledge, this is the first work to use structured HIN for Android malware detection. Comprehensive experiments on real sample collections from Comodo Cloud Security Center are conducted to compare various malware detection approaches. Promising experimental results demonstrate that our developed system HinDroid outperforms other alternative Android malware detection techniques.
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