Ghioni Riccardo, Taddeo Mariarosaria, Floridi Luciano
Department of Legal Studies, University of Bologna, Via Zamboni, 27, 40126 Bologna, IT Italy.
Oxford Internet Institute, University of Oxford, 1St Giles', Oxford, OX1 3JS UK.
AI Soc. 2023 Jan 28:1-16. doi: 10.1007/s00146-023-01628-x.
Today, open source intelligence (OSINT), i.e., information derived from publicly available sources, makes up between 80 and 90 percent of all intelligence activities carried out by Law Enforcement Agencies (LEAs) and intelligence services in the West. Developments in data mining, machine learning, visual forensics and, most importantly, the growing computing power available for commercial use, have enabled OSINT practitioners to speed up, and sometimes even automate, intelligence collection and analysis, obtaining more accurate results more quickly. As the infosphere expands to accommodate ever-increasing online presence, so does the pool of actionable OSINT. These developments raise important concerns in terms of governance, ethical, legal, and social implications (GELSI). New and crucial oversight concerns emerge alongside standard privacy concerns, as some of the more advanced data analysis tools require little to no supervision. This article offers a systematic review of the relevant literature. It analyzes 571 publications to assess the current state of the literature on the use of AI-powered OSINT (and the development of OSINT software) as it relates to the GELSI framework, highlighting potential gaps and suggesting new research directions.
如今,开源情报(OSINT),即从公开可用来源获取的信息,在西方执法机构(LEAs)和情报服务机构开展的所有情报活动中占比达80%至90%。数据挖掘、机器学习、视觉取证技术的发展,以及最重要的是,商业可用计算能力的不断增强,使得开源情报从业者能够加快甚至有时自动化情报收集和分析工作,更快地获得更准确的结果。随着信息圈不断扩大以适应日益增长的在线存在,可操作的开源情报资源池也在扩大。这些发展在治理、伦理、法律和社会影响(GELSI)方面引发了重要关注。新的关键监督问题与标准隐私问题一同出现,因为一些更先进的数据分析工具几乎不需要监督。本文对相关文献进行了系统综述。它分析了571篇出版物,以评估与GELSI框架相关的人工智能驱动的开源情报(以及开源情报软件的开发)文献的现状,突出潜在差距并提出新的研究方向。