Responsible living labs: what can go wrong?

Abdolrasoul Habibipour
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Abstract

Purpose This study aims to investigate how living lab (LL) activities align with responsible research and innovation (RRI) principles, particularly in artificial intelligence (AI)-driven digital transformation (DT) processes. The study seeks to define a framework termed “responsible living lab” (RLL), emphasizing transparency, stakeholder engagement, ethics and sustainability. This emerging issue paper also proposes several directions for future researchers in the field. Design/methodology/approach The research methodology involved a literature review complemented by insights from a workshop on defining RLLs. The literature review followed a concept-centric approach, searching key journals and conferences, yielding 32 relevant articles. Backward and forward citation analysis added 19 more articles. The workshop, conducted in the context of UrbanTestbeds.JR and SynAir-G projects, used a reverse brainstorming approach to explore potential ethical and responsible issues in LL activities. In total, 13 experts engaged in collaborative discussions, highlighting insights into AI’s role in promoting RRI within LL activities. The workshop facilitated knowledge sharing and a deeper understanding of RLL, particularly in the context of DT and AI. Findings This emerging issue paper highlights ethical considerations in LL activities, emphasizing user voluntariness, user interests and unintended participation. AI in DT introduces challenges like bias, transparency and digital divide, necessitating responsible practices. Workshop insights underscore challenges: AI bias, data privacy and transparency; opportunities: inclusive decision-making and efficient innovation. The synthesis defines RLLs as frameworks ensuring transparency, stakeholder engagement, ethical considerations and sustainability in AI-driven DT within LLs. RLLs aim to align DT with ethical values, fostering inclusivity, responsible resource use and human rights protection. Originality/value The proposed definition of RLL introduces a framework prioritizing transparency, stakeholder engagement, ethics and sustainability in LL activities, particularly those involving AI for DT. This definition aligns LL practices with RRI, addressing ethical implications of AI. The value of RLL lies in promoting inclusive and sustainable innovation, prioritizing stakeholder needs, fostering collaboration and ensuring environmental and social responsibility throughout LL activities. This concept serves as a foundational step toward a more responsible and sustainable LL approach in the era of AI-driven technologies.
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负责任的生活实验室:会出什么问题?
目的 本研究旨在探讨生活实验室(LL)活动如何与负责任研究与创新(RRI)原则保持一致,特别是在人工智能(AI)驱动的数字化转型(DT)过程中。本研究试图定义一个框架,称为 "负责任的生活实验室"(RLL),强调透明度、利益相关者参与、道德和可持续性。这篇新兴议题论文还为该领域未来的研究人员提出了几个方向。研究方法包括文献综述,以及从定义 RLL 的研讨会上获得的见解。文献综述采用了以概念为中心的方法,搜索了主要期刊和会议,共获得 32 篇相关文章。后向和前向引文分析又增加了 19 篇文章。在 UrbanTestbeds.JR 和 SynAir-G 项目背景下举办的研讨会采用了反向头脑风暴法,探讨了低地效活动中潜在的伦理和责任问题。共有 13 位专家参与了合作讨论,重点探讨了人工智能在促进土地利用活动中的 RRI 方面的作用。该研讨会促进了知识共享,加深了对可持续土地利用的理解,特别是在 DT 和人工智能背景下。研究结果这篇新议题论文强调了可持续土地利用活动中的伦理考虑因素,强调了用户自愿性、用户利益和意外参与。DT 中的人工智能带来了偏见、透明度和数字鸿沟等挑战,因此有必要采取负责任的做法。研讨会的见解强调了各种挑战:人工智能的偏见、数据隐私和透明度;机遇:包容性决策和高效创新。综合报告将 RLLs 定义为在地方政府中确保人工智能驱动的数据传输的透明度、利益相关者参与、道德考量和可持续性的框架。RLL 旨在使 DT 符合道德价值观,促进包容性、负责任地使用资源和保护人权。原创性/价值 RLL 的拟议定义引入了一个框架,优先考虑 LL 活动中的透明度、利益相关者参与、道德和可持续性,特别是涉及人工智能 DT 的活动。该定义将 LL 实践与 RRI 相结合,解决了人工智能的伦理问题。可持续土地利用的价值在于促进包容性和可持续创新,优先考虑利益相关者的需求,促进合作,并在整个土地利用活动中确保环境和社会责任。在人工智能技术驱动的时代,这一概念是迈向更负责任、更可持续的 LL 方法的基础性一步。
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