An iterative regulatory process for robot governance

IF 1.8 Q3 PUBLIC ADMINISTRATION Data & policy Pub Date : 2023-03-01 DOI:10.1017/dap.2023.3
Hadassah Drukarch, Carlos Calleja, E. Fosch-Villaronga
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引用次数: 1

Abstract

Abstract There is an increasing gap between the policy cycle’s speed and that of technological and social change. This gap is becoming broader and more prominent in robotics, that is, movable machines that perform tasks either automatically or with a degree of autonomy. This is because current legislation was unprepared for machine learning and autonomous agents. As a result, the law often lags behind and does not adequately frame robot technologies. This state of affairs inevitably increases legal uncertainty. It is unclear what regulatory frameworks developers have to follow to comply, often resulting in technology that does not perform well in the wild, is unsafe, and can exacerbate biases and lead to discrimination. This paper explores these issues and considers the background, key findings, and lessons learned of the LIAISON project, which stands for “Liaising robot development and policymaking,” and aims to ideate an alignment model for robots’ legal appraisal channeling robot policy development from a hybrid top-down/bottom-up perspective to solve this mismatch. As such, LIAISON seeks to uncover to what extent compliance tools could be used as data generators for robot policy purposes to unravel an optimal regulatory framing for existing and emerging robot technologies.
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机器人管理的迭代管理过程
摘要政策周期的速度与技术和社会变革的速度之间的差距越来越大。这一差距在机器人领域变得越来越大和突出,即自动或具有一定自主性执行任务的可移动机器。这是因为目前的立法对机器学习和自主智能没有做好准备。因此,该法律往往滞后,没有充分阐述机器人技术。这种情况不可避免地增加了法律的不确定性。目前尚不清楚开发者必须遵循什么样的监管框架才能遵守,这往往会导致技术在野外表现不佳、不安全,并可能加剧偏见和导致歧视。本文探讨了这些问题,并考虑了LIAISON项目的背景、关键发现和经验教训,该项目代表“联系机器人发展和政策制定”,旨在从自上而下/自下而上的混合视角,为机器人的法律评估提供一个协调模型,引导机器人政策制定,以解决这种不匹配问题。因此,LIAISON试图揭示合规工具在多大程度上可以用作机器人政策的数据生成器,以揭示现有和新兴机器人技术的最佳监管框架。
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CiteScore
3.10
自引率
0.00%
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0
审稿时长
12 weeks
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