基于机器学习算法的密码劫持分类

Wan Nur Aaisyah Binti Wan Mansor, Azuan Ahmad, Wan Shafiuddin Zainudin, M. Saudi, M. Kama
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引用次数: 1

摘要

加密货币的兴起引发了许多担忧。一种被称为“加密劫持”的新威胁已经进入人们的视线,加密劫持恶意软件是未来网络罪犯的趋势,他们感染计算机,安装加密货币挖矿器,并使用从受害者数据库中窃取的信息来设置钱包进行非法资金转移。研究人员估计,最糟糕的是,到2020年,全球将有300亿台物联网设备。大多数设备非常容易受到基于弱密码和未修补漏洞的简单攻击,而且监控不力。因此,物联网成为加密劫持恶意软件的完美目标是最好的预测。目前还缺乏对加密劫持恶意软件进行深入分析的研究,特别是在分类模型方面。由于物联网设备需要较小的处理能力,因此加密劫持恶意软件检测算法需要轻量级模型,以保持其准确性,同时不牺牲其他进程的性能。为此,我们提出了一种新的基于指令简化和机器学习技术的轻量级加密劫持分类器模型,该模型可以检测到加密劫持分类算法。本研究旨在研究现有加密劫持分类算法的特点,对现有算法进行改进,并对改进后的算法进行加密劫持恶意软件分类的评价。这项研究的成果将用于检测加密劫持恶意软件攻击,这将使多个行业受益,包括网络安全承包商、石油和天然气、水、电力和能源行业,这些行业与解决关键国家信息基础设施(CNII)风险的国家网络安全政策(NCSP)保持一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crytojacking Classification based on Machine Learning Algorithm
The rise of cryptocurrency has resulted in a number of concerns. A new threat known as cryptojacking" has entered the picture where cryptojacking malware is the trend for future cyber criminals, who infect computers, install cryptocurrency miners, and use stolen information from victim databases to set up wallets for illicit funds transfers. Worst by 2020, researchers estimate there will be 30 billion of IoT devices in the world. Majority of the devices are highly vulnerable to simple attacks based on weak passwords and unpatched vulnerabilities and poorly monitored. Thus it is the best projection that IoT become a perfect target for cryptojacking malwares. There are lacks of study that provide in depth analysis on cryptojacking malware especially in the classification model. As IoT devices requires small processing capability, a lightweight model are required for the cryptojacking malware detection algorithm to maintain its accuracy without sacrificing the performance of other process. As a solution, we propose a new lightweight cryptojacking classifier model based on instruction simplification and machine learning technique that can detect the cryptojacking classification algorithm. This research aims to study the features of existing cryptojacking classification algorithm, to enhanced existing algorithm and to evaluate the enhanced algorithm for cryptojacking malware classification. The output of this research will be significant used in detecting cryptojacking malware attacks that benefits multiple industries including cyber security contractors, oil and gas, water, power and energy industries which align with the National Cyber Security Policy (NCSP) which address the risks to the Critical National Information Infrastructure (CNII).
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