Frontiers in Psychology (Jan 2023)

Investigating accountability for Artificial Intelligence through risk governance: A workshop-based exploratory study

  • Ellen Hohma,
  • Auxane Boch,
  • Rainer Trauth,
  • Christoph Lütge

DOI
https://doi.org/10.3389/fpsyg.2023.1073686
Journal volume & issue
Vol. 14

Abstract

Read online

IntroductionWith the growing prevalence of AI-based systems and the development of specific regulations and standardizations in response, accountability for consequences resulting from the development or use of these technologies becomes increasingly important. However, concrete strategies and approaches of solving related challenges seem to not have been suitably developed for or communicated with AI practitioners.MethodsStudying how risk governance methods can be (re)used to administer AI accountability, we aim at contributing to closing this gap. We chose an exploratory workshop-based methodology to investigate current challenges for accountability and risk management approaches raised by AI practitioners from academia and industry.Results and DiscussionOur interactive study design revealed various insights on which aspects do or do not work for handling risks of AI in practice. From the gathered perspectives, we derived 5 required characteristics for AI risk management methodologies (balance, extendability, representation, transparency and long-term orientation) and determined demands for clarification and action (e.g., for the definition of risk and accountabilities or standardization of risk governance and management) in the effort to move AI accountability from a conceptual stage to industry practice.

Keywords