Factors Influencing User’s Intention to Adopt AI-Based Cybersecurity Systems in the UAE

Mohammed Rashed Mohamed Al Humaid Alneyadi, Md Kassim Normalini
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Background: Even though UAE is ranked among the top countries in embracing emerging technologies such as digital identity, robotic process automation (RPA), intelligent automation, and blockchain technologies, among others, it has experienced sluggish adoption of AI cybersecurity systems. This selectiveness in adopting technology begs the question of what factors could make the UAE embrace or accept new technologies, including AI-based cybersecurity systems. One of the probable reasons for the slow adoption and use of AI in cybersecurity systems in UAE organizations is the employee’s perception and attitudes towards such intelligent technologies. Methodology: The study utilized a quantitative approach whereby web-based questionnaires were used to collect data from 370 participants working in UAE government organizations considering or intending to adopt AI-based cybersecurity systems. The data was analyzed using the PLS-SEM approach. Contribution: The study is based on the Protection Motivation Theory (PMT) framework, widely used in information security research. However, it extends this model by including two more variables, job insecurity and resistance to change, to enhance its predictive/exploratory power. Thus, this research improves PMT and contributes to the body of knowledge on technology acceptance, especially in intelligent cybersecurity technology. Findings: This paper’s findings provide the basis from which further studies can be conducted while at the same time offering critical insights into the measures that can boost the acceptability and use of cybersecurity systems in the UAE. All the hypotheses were accepted. The relationship between the six constructs (perceived vulnerability (PV), perceived severity (PS), perceived response efficacy (PRE), perceived self-efficacy (PSE), job insecurity (JI), and resistance to change (RC)) and the intention to adopt AI cybersecurity systems in the UAE was found to be statistically significant. This paper’s findings provide the basis from which further studies can be conducted while at the same time offering critical insights into the measures that can boost the acceptability and use of cybersecurity systems in the UAE. Recommendations for Practitioners: All practitioners must be able to take steps and strategies that focus on factors that have a significant impact on increasing usage intentions. PSE and PRE were found to be positively related to the intention to adopt AI-based cybersecurity systems, suggesting the need for practitioners to focus on them. The government can enact legislation that emphasizes the simplicity and awareness of the benefits of cybersecurity systems in organizations. Recommendation for Researchers: Further research is needed to include other variables such as facilitating conditions, AI knowledge, social influence, and effort efficacy as well as other frameworks such as UTAUT, to better explain individuals’ behavioral intentions to use cybersecurity systems in the UAE. Impact on Society: This study can help all stakeholders understand what factors can increase users’ interest in investing in the applications that are embedded with security. As a result, they have an impact on economic recovery following the COVID-19 pandemic. Future Research: Future research is expected to investigate additional factors that can influence individuals’ behavioral intention to use cybersecurity systems such as facilitating conditions, AI knowledge, social influence, effort efficacy, as well other variables from UTAUT. International research across nations is also required to build a larger sample size to examine the behavior of users.","PeriodicalId":38962,"journal":{"name":"Interdisciplinary Journal of Information, Knowledge, and Management","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2023-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Interdisciplinary Journal of Information, Knowledge, and Management","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.28945/5166","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q2","JCRName":"Computer Science","Score":null,"Total":0}
引用次数: 1

Abstract

Aim/Purpose: The UAE and other Middle Eastern countries suffer from various cybersecurity vulnerabilities that are widespread and go undetected. Still, many UAE government organizations rely on human-centric approaches to combat the growing cybersecurity threats. These approaches are ineffective due to the rapid increase in the amount of data in cyberspace, hence necessitating the employment of intelligent technologies such as AI cybersecurity systems. In this regard, this study investigates factors influencing users’ intention to adopt AI-based cybersecurity systems in the UAE. Background: Even though UAE is ranked among the top countries in embracing emerging technologies such as digital identity, robotic process automation (RPA), intelligent automation, and blockchain technologies, among others, it has experienced sluggish adoption of AI cybersecurity systems. This selectiveness in adopting technology begs the question of what factors could make the UAE embrace or accept new technologies, including AI-based cybersecurity systems. One of the probable reasons for the slow adoption and use of AI in cybersecurity systems in UAE organizations is the employee’s perception and attitudes towards such intelligent technologies. Methodology: The study utilized a quantitative approach whereby web-based questionnaires were used to collect data from 370 participants working in UAE government organizations considering or intending to adopt AI-based cybersecurity systems. The data was analyzed using the PLS-SEM approach. Contribution: The study is based on the Protection Motivation Theory (PMT) framework, widely used in information security research. However, it extends this model by including two more variables, job insecurity and resistance to change, to enhance its predictive/exploratory power. Thus, this research improves PMT and contributes to the body of knowledge on technology acceptance, especially in intelligent cybersecurity technology. Findings: This paper’s findings provide the basis from which further studies can be conducted while at the same time offering critical insights into the measures that can boost the acceptability and use of cybersecurity systems in the UAE. All the hypotheses were accepted. The relationship between the six constructs (perceived vulnerability (PV), perceived severity (PS), perceived response efficacy (PRE), perceived self-efficacy (PSE), job insecurity (JI), and resistance to change (RC)) and the intention to adopt AI cybersecurity systems in the UAE was found to be statistically significant. This paper’s findings provide the basis from which further studies can be conducted while at the same time offering critical insights into the measures that can boost the acceptability and use of cybersecurity systems in the UAE. Recommendations for Practitioners: All practitioners must be able to take steps and strategies that focus on factors that have a significant impact on increasing usage intentions. PSE and PRE were found to be positively related to the intention to adopt AI-based cybersecurity systems, suggesting the need for practitioners to focus on them. The government can enact legislation that emphasizes the simplicity and awareness of the benefits of cybersecurity systems in organizations. Recommendation for Researchers: Further research is needed to include other variables such as facilitating conditions, AI knowledge, social influence, and effort efficacy as well as other frameworks such as UTAUT, to better explain individuals’ behavioral intentions to use cybersecurity systems in the UAE. Impact on Society: This study can help all stakeholders understand what factors can increase users’ interest in investing in the applications that are embedded with security. As a result, they have an impact on economic recovery following the COVID-19 pandemic. Future Research: Future research is expected to investigate additional factors that can influence individuals’ behavioral intention to use cybersecurity systems such as facilitating conditions, AI knowledge, social influence, effort efficacy, as well other variables from UTAUT. International research across nations is also required to build a larger sample size to examine the behavior of users.
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影响阿联酋用户采用基于人工智能的网络安全系统意愿的因素
目的/目的:阿联酋和其他中东国家普遍存在各种未被发现的网络安全漏洞。尽管如此,许多阿联酋政府机构还是依靠以人为本的方法来应对日益严重的网络安全威胁。由于网络空间数据量的快速增长,这些方法是无效的,因此需要使用人工智能网络安全系统等智能技术。在这方面,本研究调查了影响阿联酋用户采用基于人工智能的网络安全系统意愿的因素。背景:尽管阿联酋在数字身份、机器人过程自动化(RPA)、智能自动化和区块链技术等新兴技术方面名列前茅,但它在人工智能网络安全系统的采用方面却表现迟缓。这种采用技术的选择性引出了一个问题,即哪些因素可能使阿联酋接受或接受新技术,包括基于人工智能的网络安全系统。阿联酋组织在网络安全系统中采用和使用人工智能的缓慢原因之一可能是员工对这种智能技术的看法和态度。研究方法:本研究采用定量方法,通过基于网络的问卷调查,从正在考虑或打算采用基于人工智能的网络安全系统的阿联酋政府组织中工作的370名参与者中收集数据。采用PLS-SEM方法对数据进行分析。贡献:本研究基于信息安全研究中广泛使用的保护动机理论(PMT)框架。然而,它扩展了这个模型,增加了两个变量,工作不安全感和对变革的抵制,以增强其预测/探索能力。因此,本研究改进了PMT,并有助于技术接受的知识体系,特别是在智能网络安全技术方面。研究结果:本文的研究结果为进一步研究提供了基础,同时为提高阿联酋网络安全系统的可接受性和使用的措施提供了关键见解。所有的假设都被接受了。六个构念(感知脆弱性(PV)、感知严重性(PS)、感知反应效能(PRE)、感知自我效能(PSE)、工作不安全感(JI)和抗拒变革(RC))与阿联酋采用人工智能网络安全系统的意图之间的关系具有统计学意义。本文的研究结果为进一步研究提供了基础,同时为提高阿联酋网络安全系统的可接受性和使用的措施提供了重要见解。对从业者的建议:所有从业者必须能够采取步骤和策略,关注对增加使用意图有重大影响的因素。PSE和PRE被发现与采用基于人工智能的网络安全系统的意愿呈正相关,这表明从业者需要关注它们。政府可以制定立法,强调组织中网络安全系统的简单性和利益意识。对研究人员的建议:需要进一步的研究,包括其他变量,如便利条件、人工智能知识、社会影响和努力效率,以及其他框架,如UTAUT,以更好地解释个人在阿联酋使用网络安全系统的行为意图。对社会的影响:这项研究可以帮助所有利益相关者了解哪些因素可以增加用户对嵌入安全性的应用程序的投资兴趣。因此,它们对2019冠状病毒病大流行后的经济复苏产生了影响。未来研究:未来的研究预计将调查可能影响个人使用网络安全系统的行为意愿的其他因素,如便利条件、人工智能知识、社会影响、努力效率以及UTAUT的其他变量。跨国研究也需要建立一个更大的样本量来检查用户的行为。
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CiteScore
2.30
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0.00%
发文量
14
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