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An improved Android malware detection scheme based on an evolving hybrid neuro-fuzzy classifier (EHNFC) and permission-based features

机译:基于演化的混合神经模糊分类器(EHNFC)和基于权限的特征的改进的Android恶意软件检测方案

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摘要

The increasing number of Android devices and users has been attracting the attention of different types of attackers. Malware authors create new versions of malware from previous ones by implementing code obfuscation techniques. Obfuscated malware is potentially contributed to the exponential increase in the number of generated malware variants. Detection of obfuscated malware is a continuous challenge because it can easily evade the signature-based malware detectors, and behaviour-based detectors are not able to detect them accurately. Therefore, an efficient technique for obfuscated malware detection in Android-based smartphones is needed. In the literature on Android malware classification, few malware detection approaches are designed with the capability of detecting obfuscated malware. However, these malware detection approaches were not equipped with the capacity to improve their performance by learning and evolving their malware detection rules. Based on the concept of evolving soft computing systems, this paper proposes an evolving hybrid neuro-fuzzy classifier (EHNFC) for Android malware classification using permission-based features. The proposed EHNFC not only has the capability of detecting obfuscated malware using fuzzy rules, but can also evolve its structure by learning new malware detection fuzzy rules to improve its detection accuracy when used in detection of more malware applications. To this end, an evolving clustering method for adapting and evolving malware detection fuzzy rules was modified to incorporate an adaptive procedure for updating the radii and centres of clustered permission-based features. This modification to the evolving clustering method enhances cluster convergence and generates rules that are better tailored to the input data, hence improving the classification accuracy of the proposed EHNFC. The experimental results for the proposed EHNFC show that the proposal outperforms several state-of-the-art obfuscated malware classification approaches in terms of false negative rate (0.05) and false positive rate (0.05). The results also demonstrate that the proposal detects the Android malware better than other neuro-fuzzy systems (viz., the adaptive neuro-fuzzy inference system and the dynamic evolving neuro-fuzzy system) in terms of accuracy (90%).
机译:越来越多的Android设备和用户已经吸引了不同类型的攻击者的注意。恶意软件作者通过实现代码混淆技术,创建来自以前的Malware的新版本。混淆恶意软件可能导致生成恶意软件变体数量的指​​数增加。检测混淆恶意软件是一个持续的挑战,因为它可以很容易地避免基于签名的恶意软件探测器,并且基于行为的检测器无法准确地检测它们。因此,需要在基于Android的智能手机中进行混淆恶意软件检测的有效技术。在Android恶意软件分类上的文献中,很少有恶意软件检测方法设计具有检测混淆恶意软件的能力。但是,这些恶意软件检测方法未配备通过学习和不断发展恶意软件检测规则来提高其性能的能力。基于发展软计算系统的概念,本文提出了一种不断发展的混合神经模糊分类器(EHNFC),用于使用基于权限的特征进行Android恶意软件分类。所提出的EHNFC不仅具有使用模糊规则检测混淆恶意软件的能力,而且还可以通过学习新的恶意软件检测模糊规则来改进其结构,以便在检测到更多恶意软件应用程序时提高其检测精度。为此,修改了一种不断发展的聚类方法,用于调整和发展恶意软件检测模糊规则,以结合用于更新RADII和基于集群许可的中心的自适应过程。这种对不断变化的聚类方法的修改增强了集群收敛性并生成更好地定制到输入数据的规则,从而提高了所提出的EHNFC的分类精度。拟议的EHNFC的实验结果表明,该提案在假负率(0.05)和假阳性率(0.05)方面表现出几种最先进的恶意软件分类方法。结果还表明该提议在准确度(90%)方面,该提案比其他神经模糊系统(viz,自适应神经模糊推理系统和动态的神经模糊系统和动态演化神经模糊系统)更好地检测到更好的Android恶意软件。

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