Achieving a Data‐Driven Risk Assessment Methodology for Ethical AI

Anna Felländer, Jonathan Rebane, Stefan Larsson, Mattias Wiggberg, Fredrik Heintz

Research output: Contribution to journalArticlepeer-review

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Abstract

The AI landscape demands a broad set of legal, ethical, and societal considerations to be accounted for in order to develop ethical AI (eAI) solutions which sustain human values and rights. Currently, a variety of guidelines and a handful of niche tools exist to account for and tackle individual challenges. However, it is also well established that many organizations face practical challenges in navigating these considerations from a risk management perspective within AI governance. Therefore, new methodologies are needed to provide a well-vetted and real-world applicable structure and path through the checks and balances needed for ethically assessing and guiding the development of AI. In this paper, we show that a multidisciplinary research approach, spanning cross-sectional viewpoints, is the foundation of a pragmatic definition of ethical and societal risks faced by organizations using AI. Equally important are the findings of cross-structural governance for implementing eAI successfully. Based on evidence acquired from our multidisciplinary research investigation, we propose a novel data-driven risk assessment methodology, entitled DRESS-eAI. In addition, through the evaluation of our methodological implementation, we demonstrate its state-of-the-art relevance as a tool for sustaining human values in the data-driven AI era.
Original languageEnglish
Article number13
Pages (from-to)1-27
Number of pages27
JournalDigital Society
Volume1
Issue number2
DOIs
Publication statusPublished - 2022 Aug 18

Subject classification (UKÄ)

  • Other Engineering and Technologies
  • Law
  • Other Social Sciences

Free keywords

  • AI ethics
  • AI governance
  • ethical assessment
  • multidisciplinary research
  • sustainable AI

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