Detection of Spyware by Mining Executable Files

R. Shahzad, S. Haider, Niklas Lavesson
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引用次数: 38

Abstract

Spyware represents a serious threat to confidentiality since it may result in loss of control over private data for computer users. This type of software might collect the data and send it to a third party without informed user consent. Traditionally two approaches have been presented for the purpose of spyware detection: Signature-based Detection and Heuristic-based Detection. These approaches perform well against known Spyware but have not been proven to be successful at detecting new spyware. This paper presents a Spyware detection approach by using Data Mining (DM)technologies. Our approach is inspired by DM-based malicious code detectors, which are known to work well for detecting viruses and similar software. However, this type of detector has not been investigated in terms of how well it is able to detect spyware. We extract binary features, called n-grams, from both spyware and legitimate software and apply five different supervised learning algorithms to train classifiers that are able to classify unknown binaries by analyzing extracted n-grams. The experimental results suggest that our method is successful even when the training data is scarce.
通过挖掘可执行文件检测间谍软件
间谍软件是对机密性的严重威胁,因为它可能导致计算机用户失去对私人数据的控制。这种类型的软件可能会收集数据并将其发送给第三方,而无需知情的用户同意。传统的间谍软件检测方法有两种:基于签名的检测和基于启发式的检测。这些方法对已知的间谍软件表现良好,但尚未被证明是成功的检测新的间谍软件。本文提出了一种基于数据挖掘技术的间谍软件检测方法。我们的方法受到基于dm的恶意代码检测器的启发,这种检测器可以很好地检测病毒和类似的软件。然而,这种类型的检测器还没有在如何很好地检测间谍软件方面进行调查。我们从间谍软件和合法软件中提取二进制特征,称为n-grams,并应用五种不同的监督学习算法来训练分类器,这些分类器能够通过分析提取的n-gram来分类未知的二进制文件。实验结果表明,即使在训练数据稀缺的情况下,我们的方法也是成功的。
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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