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人工智能对数据系统安全的影响:文献综述。

The Impact of Artificial Intelligence on Data System Security: A Literature Review.

机构信息

ISEC Lisboa, Instituto Superior de Educação e Ciências, 1750-142 Lisbon, Portugal.

Research Unit on Governance, Competitiveness and Public Policies (GOVCOPP), University of Aveiro, 3810-193 Aveiro, Portugal.

出版信息

Sensors (Basel). 2021 Oct 23;21(21):7029. doi: 10.3390/s21217029.

Abstract

Diverse forms of artificial intelligence (AI) are at the forefront of triggering digital security innovations based on the threats that are arising in this post-COVID world. On the one hand, companies are experiencing difficulty in dealing with security challenges with regard to a variety of issues ranging from system openness, decision making, quality control, and web domain, to mention a few. On the other hand, in the last decade, research has focused on security capabilities based on tools such as platform complacency, intelligent trees, modeling methods, and outage management systems in an effort to understand the interplay between AI and those issues. the dependence on the emergence of AI in running industries and shaping the education, transports, and health sectors is now well known in the literature. AI is increasingly employed in managing data security across economic sectors. Thus, a literature review of AI and system security within the current digital society is opportune. This paper aims at identifying research trends in the field through a systematic bibliometric literature review (LRSB) of research on AI and system security. the review entails 77 articles published in the Scopus database, presenting up-to-date knowledge on the topic. the LRSB results were synthesized across current research subthemes. Findings are presented. the originality of the paper relies on its LRSB method, together with an extant review of articles that have not been categorized so far. Implications for future research are suggested.

摘要

人工智能(AI)的各种形式正处于触发数字安全创新的前沿,这是基于后 COVID 世界中出现的威胁。一方面,公司在处理各种问题的安全挑战方面遇到困难,这些问题包括系统开放性、决策制定、质量控制和网络领域等。另一方面,在过去十年中,研究集中在基于平台自满、智能树、建模方法和故障管理系统等工具的安全能力上,以努力理解 AI 与这些问题之间的相互作用。在运行行业和塑造教育、交通和卫生部门方面对 AI 的依赖,在文献中已经广为人知。AI 越来越多地用于管理经济领域的数据安全。因此,对当前数字社会中的 AI 和系统安全进行文献综述是适时的。本文旨在通过对 AI 和系统安全研究的系统文献综述(LRSB)来确定该领域的研究趋势。综述涉及 Scopus 数据库中发表的 77 篇文章,提供了关于该主题的最新知识。综述结果是根据当前研究子主题综合得出的。研究结果如下。本文的创新性在于其 LRSB 方法,以及对迄今为止尚未分类的文章进行的综述。对未来研究提出了建议。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/47c0/8586986/3cb160f32d10/sensors-21-07029-g001.jpg

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