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Two-layer detection framework with a high accuracy and efficiency for a malware family over the TLS protocol

机译:双层检测框架,具有高精度和效率的恶意软件系列,通过TLS协议

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摘要

The transport layer security (TLS) protocol is widely adopted by apps as well as malware. With the geometric growth of TLS traffic, accurate and efficient detection of malicious TLS flows is becoming an imperative. However, current studies focus on either detection accuracy or detection efficiency, and few studies take into account both indicators. In this paper, we propose a two-layer detection framework composed of a filtering model (FM) and a malware family classification model (MFCM). In the first layer, a new set of TLS handshake features is presented to train the FM, which is devised to filter out a majority of benign TLS flows. For identifying malware families, both TLS handshake features and statistical features are applied to construct the MFCM in the second layer. Comprehensive experiments are conducted to substantiate the high accuracy and efficiency of the proposed two-layer framework. A total of 96.32% of benign TLS flows can be filtered out by the FM with few malicious TLS flows being discarded provided the threshold of the FM is set to 0.01. Moreover, a multiclassifier is selected to construct the MFCM to provide better performance than a set of binary classifiers under the same feature set. In addition, when the ratio of benign and malicious TLS flows is set to 10:1, the detection efficiency of the two-layer framework is 188% faster than that of the single-layer framework, while the average detection accuracy reaches 99.45%.
机译:传输层安全性(TLS)协议被应用程序和恶意软件广泛采用。随着TLS流量的几何生长,准确和有效地检测恶意TLS流动正在成为一个必要的。然而,目前的研究侧重于检测准确性或检测效率,并且少数研究考虑到两个指标。在本文中,我们提出了一种由滤波模型(FM)和恶意软件族分类模型(MFCM)组成的双层检测框架。在第一层中,提出了一组新的TLS握手特征,以培训FM,这被设计为滤除大多数良性TLS流动。为了识别恶意软件系列,将应用TLS握手特征和统计特征来构建第二层中的MFCM。进行综合实验以证实提出的双层框架的高精度和效率。总共96.32%的良性TLS流量可以通过丢弃少数恶意TLS流动的FM滤除,条件是FM的阈值设置为0.01。此外,选择多批变器以构建MFCM,以提供比同一特征集下的一组二进制分类器的性能。另外,当良性和恶意TLS流量的比率设定为10:1时,两层框架的检测效率比单层框架的速度快188%,而平均检测精度达到99.45%。

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