利用基于人工智能的风险引擎和大数据概念实现边境安全的数据共享模型

Mohammad S. Al Rousan, B. Intrigila
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引用次数: 0

摘要

本研究的主要目的是开发一个数据管理和共享框架,使各国能够通过使用大数据分析和人工智能(AI)共享有关已知和未知高风险乘客的复杂数据,以简化边境控制安全流程。共使用15个半结构化访谈来收集定性数据。采用专题分析方法对数据进行分析,使用NVivo 11定性数据分析软件对访谈数据进行编码。根据从数据中产生的39个代码,制定了五个总体维度,包括九个主题和九个子主题。本研究具有一定的理论和实践意义。首先,基于人工智能的风险引擎的开发不仅将改善边境执法方式,而且还将导致边境控制新技术的整合,从而促进证券化,减少人为因素/错误,最大限度地减少与边境有关的犯罪,并有助于管理医疗保健问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Data-Sharing Model to Secure Borders Using an Artificial-Intelligence-Based Risk Engine and Big-Data Concepts
: The primary aim of this research is to develop a framework for data management and sharing that will enable countries to share complex data about known and unknown high-risk passengers to streamline border-control security processes through the use of big data analytics and Artificial Intelligence (AI). A total of 15 semi-structured interviews were used to gather qualitative data. A thematic analysis approach was used to analyze the data and the interview data were coded using NVivo 11 qualitative-data-analysis software. Five aggregate dimensions were developed, comprising nine themes and nine sub-themes, based on 39 codes that emerged from the data. This research has several theoretical and practical contributions. Primarily, the development of an AI-based risk engine will not only improve how borders are enforced but will also lead to the integration of new technology for border control, thus boosting securitization, decreasing human factors/error, minimizing border-related crime, and helping to manage healthcare issues.
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