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RAMD: registry-based anomaly malware detection using one-class ensemble classifiers

机译:RAMD:基于注册表的异常恶意软件检测使用单级合奏分类器

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摘要

Malware is continuously evolving and becoming more sophisticated to avoid detection. Traditionally, the Windows operating system has been the most popular target for malware writers because of its dominance in the market of desktop operating systems. However, despite a large volume of new Windows malware samples that are collected daily, there is relatively little research focusing on Windows malware. The Windows Registry, or simply the registry, is very heavily used by programs in Windows, making it a good source for detecting malicious behavior. In this paper, we present RAMD, a novel approach that uses an ensemble classifier consisting of multiple one-class classifiers to detect known and especially unknown malware abusing registry keys and values for malicious intent. RAMD builds a model of registry behavior of benign programs and then uses this model to detect malware by looking for anomalous registry accesses. In detail, it constructs an initial ensemble classifier by training multiple one-class classifiers and then applies a novel swarm intelligence pruning algorithm, called memetic firefly-based ensemble classifier pruning (MFECP), on the ensemble classifier to reduce its size by selecting only a subset of one-class classifiers that are highly accurate and have diversity in their outputs. To combine the outputs of one-class classifiers in the pruned ensemble classifier, RAMD uses a specific aggregation operator, called Fibonacci-based superincreasing ordered weighted averaging (FSOWA). The results of our experiments performed on a dataset of benign and malware samples show that RAMD can achieve about 98.52% detection rate, 2.19% false alarm rate, and 98.43% accuracy.
机译:恶意软件不断发展并变得更加复杂,以避免检测。传统上,由于其在桌面操作系统市场中的主导地位,Windows操作系统是恶意软件作家最受欢迎的目标。但是,尽管每天收集的大量新的Windows恶意软件样本,但在Windows Malware上侧重于研究。 Windows注册表或简单的注册表是Windows中的程序非常大量使用,使其成为检测恶意行为的好源。在本文中,我们呈现RAMD,一种新的方法,它使用由多个单级分类器组成的集合分类器来检测已知的,尤其是未知的恶意软件滥用恶意意图的注册表项和值。 RAMD构建良性程序的注册表行为模型,然后使用此模型来检测恶意软件,通过查找异常注册表访问。详细地,它通过训练多个单级分类器来构造初始合奏分类器,然后在集合分类器上应用一个名为Memetive Firefly的集合分类器修剪(MFECP)的新型群智能修剪算法,以减少其大小一类分类器的子集,其在其输出中具有高度准确并具有多样性。要将单级分类器的输出组合在修剪的集合分类器中,RAMD使用特定的聚合运算符,称为基于Fibonacci的SuperIncreasing有序加权平均(FSOWA)。我们的实验结果在良性和恶意软件样本的数据集上进行,表明RAMD可以达到约98.52%的检测率,2.19%的误报率和98.43%的准确度。

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