Botnet Threat Intelligence in IoT-Edge

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Abstract

Recently, deep learning has gotten progressively popular in the domain of security. However, Traditional machine learning models are not capable to discover zero-day botnet attacks with extraordinary privacy. For this purpose, researchers have utilized deep learning based computational framework for Botnet which can detect zero-day attacks, achieve data privacy and improve training time using machine learning techniques for the IoT-edge devices. However, it combines and integrates various models and contexts. As a result, the objective of this research was to incorporate the deep learning model which controls different operation of IoT devices and reduce the training time. In deep learning, there are numerous components that aspect the false positive rate of every detected attack type. These elements are F1 score, false-positive rate, and training time; reduce the time of detection, and Accuracy. Bashlite and Mirai are two examples of zero-day botnet attacks that pose a threat to IoT edge devices. The majority of cyber-attacks are executed by malware-infected devices that are remotely controlled by attackers. This malware is often referred to as a bot or botnet, and it enables attackers to control the device and perform malicious actions, such as spamming, stealing sensitive information, and launching DDoS attacks. The model was formulated in Python libraries and subsequently tested on real life data to assess whether the integrated model performs better than its counterparts. The outcomes show that the proposed model performs in a way that is better than existing models i.e. DDL, CDL and LDL as Botnet Attacks Intelligence (BAI) the purposed deep learning model.
物联网边缘中的僵尸网络威胁情报
最近,深度学习在安全领域越来越受欢迎。然而,传统的机器学习模型无法发现具有非凡隐私的零日僵尸网络攻击。为此,研究人员利用基于深度学习的僵尸网络计算框架,可以检测零日攻击,实现数据隐私,并使用机器学习技术为物联网边缘设备缩短训练时间。然而,它结合并集成了各种模型和上下文。因此,本研究的目的是结合深度学习模型,控制物联网设备的不同操作,减少训练时间。在深度学习中,有许多组件可以衡量每种检测到的攻击类型的误报率。这些因素是F1分数、假阳性率和训练时间;减少检测时间,提高准确性。Bashlite和Mirai是两个对物联网边缘设备构成威胁的零日僵尸网络攻击的例子。大多数网络攻击是由攻击者远程控制的受恶意软件感染的设备执行的。这种恶意软件通常被称为机器人或僵尸网络,它使攻击者能够控制设备并执行恶意操作,例如发送垃圾邮件、窃取敏感信息和发起DDoS攻击。该模型是在Python库中制定的,随后在实际数据上进行了测试,以评估集成模型是否比同类模型表现得更好。结果表明,所提模型的性能优于现有模型,即DDL、CDL和LDL作为僵尸网络攻击智能(BAI)的目的深度学习模型。
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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