The Android operating system is pervasively adopted as the operating system platform of choice for smart devices. However, the strong adoption has also resulted in exponential growth in the number of Android based malicious software or malware. To deal with such cyber threats as part of cyber investigation and digital forensics, computational techniques in the form of machine learning algorithms are applied for such malware identification, detection and forensics analysis. However, such Computational Forensics modelling techniques are constrained the volume, velocity, variety and veracity of the malware landscape. This in turn would affect its identification and detection effectiveness. Such consequence would inherently induce the question of sustainability with such solution approach. One approach to optimise effectiveness is to apply dimensional reduction techniques like Principal Component Analysis with the intent to enhance algorithmic performance. In this paper, we evaluate the effectiveness of the application of Principle Component Analysis on Computational Forensics task of detecting Android based malware. We applied our research hypothesis to three different datasets with different machine learning algorithms. Our research result showed that the dimensionally reduced dataset would result in a measure of degradation in accuracy performance.
翻译:机械操作系统被普遍作为智能设备操作系统选择的操作系统平台。然而,强力应用也导致基于机器人的恶意软件或恶意软件的数量成指数增长。为了应对网络调查和数字法证的一部分的网络威胁,将机器学习算法形式的计算技术应用于此类恶意软件识别、检测和法证分析。然而,这种计算法证模型技术限制了恶意软件的体积、速度、多样性和真实性。这反过来又会影响其识别和检测效果。这种结果必然会引发这种解决方案方法的可持续性问题。一种优化效果的方法是应用诸如主构件分析等维度减排技术,目的是提高算法性绩效。在本文中,我们评估了应用计算法证原则组成部分分析检测基于机器人的恶意软件的实效。我们用不同的机器学习算法对三个不同的数据集应用了我们的研究假设。我们的研究结果表明,尺寸减少的数据集将导致精确性表现的退化。