An Insight into Deep Learning based Cryptojacking Detection Model

S. S. Sivaraju
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引用次数: 3

Abstract

To autonomously identify cyber threats is a non-trivial research topic. One area where this is most apparent is in the evolution of evasive cyber assaults, which are becoming better at masking their existence and obscuring their attack methods (for example, file-less malware). Particularly stealthy Advanced Persistent Threats may hide out in the system for a long time without being spotted. This study presents a novel method, dubbed CapJack, for identifying illicit bitcoin mining activity in a web browser by using cutting-edge CapsNet technology. Thus far, it is aware that deep learning framework CapsNet is pertained to the problem of detecting malware effectively using a heuristic based on system behaviour. Even more, in multitasking situations when several apps are all active at the same time, it is possible to identify fraudulent miners with greater efficiency.
基于深度学习的加密劫持检测模型
自主识别网络威胁是一个不容忽视的研究课题。这一点最明显的一个领域是闪避式网络攻击的演变,这种攻击越来越善于掩盖自己的存在和模糊攻击方法(例如,无文件恶意软件)。特别隐秘的高级持续威胁可能在系统中隐藏很长时间而不被发现。这项研究提出了一种被称为CapJack的新方法,通过使用尖端的CapsNet技术来识别网络浏览器中的非法比特币挖矿活动。到目前为止,它意识到深度学习框架CapsNet涉及使用基于系统行为的启发式有效检测恶意软件的问题。更重要的是,在多个应用程序同时处于活动状态的多任务情况下,可以更有效地识别欺诈性矿工。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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