基于物联网的企业信息系统中恶意软件检测的机器学习方法综述

IF 4.4 4区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Akshat Gaurav, B. Gupta, P. Panigrahi
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引用次数: 55

摘要

摘要物联网(IoT)是一项相对较新的技术,近年来引起了学术界和商业信息系统的关注。物联网建立了一个网络,使组织信息系统中的智能设备能够相互连接,并与中央存储器交换数据。安卓应用程序被放置在安卓应用上,以增强商业信息系统中物联网设备的用户友好性,使其更具互动性和用户友好性。然而,安卓应用程序的使用使物联网设备容易受到各种形式的恶意软件攻击,包括那些试图侵入物联网设备并访问存储在公司信息系统中的敏感信息的设备。研究人员提供了多种攻击缓解方法,用于检测在物联网设备上运行的安卓应用程序中嵌入的有害恶意软件。在这种情况下,机器学习提供了最有前途的策略来检测基于物联网的企业信息系统中的恶意软件攻击,因为它具有更好的准确性和准确性。它适应新形式恶意软件攻击的能力是其学习能力的结果。因此,我们进行了一项详细的调查,讨论了在物联网支持的商业信息系统中检测恶意软件的新兴机器学习算法。本文综述了所有可用的恶意软件检测研究,包括静态恶意软件检测、动态恶意软件检测,推广恶意软件检测和混合恶意软件检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comprehensive survey on machine learning approaches for malware detection in IoT-based enterprise information system
ABSTRACT The Internet of Things (IoT) is a relatively new technology that has piqued academics’ and business information systems’ attention in recent years. The Internet of Things establishes a network that enables smart devices in an organisational information system to connect to one another and exchange data with the central storage. Android apps are placed on Android apps to enhance the user-friendliness of IoT devices in business information systems, making them more interactive and user-friendly. However, the usage of Android apps makes IoT devices susceptible to all forms of malware attacks, including those that attempt to hack into IoT devices and get access to sensitive information stored in the corporate information system. The researchers offered a variety of attack mitigation approaches for detecting harmful malware embedded in an Android application operating on an IoT device. In this context, machine learning offered the most promising strategies to detect malware attacks in IoT-based enterprise information systems because of its better accuracy and precision. Its capacity to adapt to new forms of malware attacks is a result of its learning capabilities. Therefore, we conduct a detailed survey, which discusses emerging machine learning algorithms for detecting malware in business information systems powered by the Internet of Things. This article reviews all available research on malware detection, including static malware detection, dynamic malware detection, promoted malware detection and hybrid malware detection.
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来源期刊
Enterprise Information Systems
Enterprise Information Systems 工程技术-计算机:信息系统
CiteScore
11.00
自引率
6.80%
发文量
24
审稿时长
6 months
期刊介绍: Enterprise Information Systems (EIS) focusses on both the technical and applications aspects of EIS technology, and the complex and cross-disciplinary problems of enterprise integration that arise in integrating extended enterprises in a contemporary global supply chain environment. Techniques developed in mathematical science, computer science, manufacturing engineering, and operations management used in the design or operation of EIS will also be considered.
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