Structural Logic of AI Surveillance and Its Normalisation in the Public Sphere

Yong-jin Park
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引用次数: 3

Abstract

This study examines the fundamental logics of surveillance impetus in the rapid transition to AI-based information processing. In this paper, these logics are called axioms—three principles of (1) concentrated architectural codes, (2) constrained user psychology, and (3) peculiar characteristics of data as information. This study argues that each axiom perpetuates AI's tendency to solidify data surveillance and normalises it in newly emerged AI-driven public spheres. This is a conceptual paper structured in the following sections—(a) axioms (three principles maintaining the impetus of surveillance normalisation), (b) mutual shaping (interaction between users and institutions reinforcing surveillance), and (c) policy remedies (policy principles fixing normalisation). The thesis of this paper is the normalisation of AI—perpetuated by three axioms—is the product of mutual shaping between institutions and uses as “data-hungry” algorithms exacerbate the tendency in which users are to participate willingly in surveillance. This poses the concern that data surveillance in its pronounced normalising processes becomes an industrial structural problem, not an episodic one. This paper concludes by calling for sanguine intervention measures, collectively tackling the structural recurrence of surveillance in the U.S.-specific contexts but also touching upon even broader global policy discussion.
人工智能监控的结构逻辑及其在公共领域的规范化
本研究考察了在快速过渡到基于人工智能的信息处理过程中监控动力的基本逻辑。在本文中,这些逻辑被称为公理——三个原则:(1)集中的架构代码,(2)受约束的用户心理,以及(3)数据作为信息的特殊特征。这项研究认为,每个公理都延续了人工智能在新出现的人工智能驱动的公共领域巩固数据监控并使其正常化的趋势。这是一篇概念性论文,由以下部分构成——(a)公理(维持监督正常化动力的三项原则),(b)相互塑造(用户和机构之间的互动加强监督),以及(c)政策补救(修复正常化的政策原则)。本文的主题是人工智能的正常化——由三个公理维持——是机构和用途之间相互塑造的产物,因为“数据饥渴”算法加剧了用户自愿参与监控的趋势。这引发了一种担忧,即数据监控在其明显的正常化过程中,将成为一个产业结构性问题,而非偶发问题。本文最后呼吁采取乐观的干预措施,共同解决美国特定背景下监控的结构性复发问题,但也涉及更广泛的全球政策讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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