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Detecting Malware-Infected Devices Using the HTTP Header Patterns

机译:使用HTTP标头模式检测受恶意软件感染的设备

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Damage caused by malware has become a serious problem. The recent rise in the spread of evasive malware has made it difficult to detect it at the pre-infection timing. Malware detection at post-infection timing is a promising approach that fulfills this gap. Given this background, this work aims to identify likely malware-infected devices from the measurement of Internet traffic. The advantage of the traffic-measurement-based approach is that it enables us to monitor a large number of endhosts. If we find an endhost as a source of malicious traffic, the endhost is likely a malware-infected device. Since the majority of malware today makes use of the web as a means to communicate with the C&C servers that reside on the external network, we leverage information recorded in the HTTP headers to discriminate between malicious and benign traffic. To make our approach scalable and robust, we develop the automatic template generation scheme that drastically reduces the amount of information to be kept while achieving the high accuracy of classification; since it does not make use of any domain knowledge, the approach should be robust against changes of malware. We apply several classifiers, which include machine learning algorithms, to the extracted templates and classify traffic into two categories: malicious and benign. Our extensive experiments demonstrate that our approach discriminates between malicious and benign traffic with up to 97.1% precision while maintaining the false positive rate below 1.0%.
机译:恶意软件造成的损害已成为一个严重的问题。逃避性恶意软件的传播最近有所增加,这使得在感染前的时机很难检测到它。在感染后进行恶意软件检测是一种有希望的方法,可以填补这一空白。在这种背景下,这项工作旨在从Internet流量的测量中识别出可能感染了恶意软件的设备。基于流量测量的方法的优势在于,它使我们能够监视大量的主机。如果我们发现端主机是恶意流量的来源,则该端主机很可能是受恶意软件感染的设备。由于当今大多数恶意软件都利用Web作为与位于外部网络上的C&C服务器通信的手段,因此我们利用HTTP标头中记录的信息来区分恶意流量和良性流量。为了使我们的方法具有可扩展性和鲁棒性,我们开发了自动模板生成方案,该方案在实现高精度分类的同时,大大减少了要保留的信息量。由于它不使用任何领域知识,因此该方法应能够抵御恶意软件的更改。我们对提取的模板应用了多个分类器,其中包括机器学习算法,并将流量分类为两类:恶意和良性。我们广泛的实验表明,我们的方法能够以高达97.1%的精度区分恶意流量和良性流量,同时将误报率保持在1.0%以下。

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