FeatureSmith: Automatically Engineering Features for Malware Detection by Mining the Security Literature

Ziyun Zhu, T. Dumitras
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引用次数: 95

Abstract

Malware detection increasingly relies on machine learning techniques, which utilize multiple features to separate the malware from the benign apps. The effectiveness of these techniques primarily depends on the manual feature engineering process, based on human knowledge and intuition. However, given the adversaries' efforts to evade detection and the growing volume of publications on malware behaviors, the feature engineering process likely draws from a fraction of the relevant knowledge. We propose an end-to-end approach for automatic feature engineering. We describe techniques for mining documents written in natural language (e.g. scientific papers) and for representing and querying the knowledge about malware in a way that mirrors the human feature engineering process. Specifically, we first identify abstract behaviors that are associated with malware, and then we map these behaviors to concrete features that can be tested experimentally. We implement these ideas in a system called FeatureSmith, which generates a feature set for detecting Android malware. We train a classifier using these features on a large data set of benign and malicious apps. This classifier achieves a 92.5% true positive rate with only 1% false positives, which is comparable to the performance of a state-of-the-art Android malware detector that relies on manually engineered features. In addition, FeatureSmith is able to suggest informative features that are absent from the manually engineered set and to link the features generated to abstract concepts that describe malware behaviors.
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FeatureSmith:通过挖掘安全文献自动检测恶意软件的工程特征
恶意软件检测越来越依赖于机器学习技术,该技术利用多种功能将恶意软件与良性应用程序分开。这些技术的有效性主要依赖于基于人类知识和直觉的手动特征工程过程。然而,考虑到攻击者努力逃避检测,以及恶意软件行为的出版物数量不断增加,特征工程过程可能只涉及到相关知识的一小部分。我们提出了一种端到端的自动特征工程方法。我们描述了挖掘以自然语言编写的文档(例如科学论文)的技术,以及以反映人类特征工程过程的方式表示和查询有关恶意软件的知识的技术。具体来说,我们首先识别与恶意软件相关的抽象行为,然后我们将这些行为映射到可以通过实验测试的具体特征。我们在一个名为featuressmith的系统中实现了这些想法,该系统生成了一个检测Android恶意软件的功能集。我们使用这些特征在大量良性和恶意应用程序的数据集上训练分类器。该分类器实现了92.5%的真阳性率,只有1%的假阳性,这与依赖于人工设计功能的最先进的Android恶意软件检测器的性能相当。此外,FeatureSmith能够提出人工设计集合中缺少的信息特征,并将生成的特征与描述恶意软件行为的抽象概念联系起来。
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