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The aim of this special issue is to provide a sociotechnical system perspective on Artificial Intelligence (AI).Discussions on AI still often focus on the technology itself rather than on the broader systems in which it functions.This is even true when it comes to the social and ethical issues raised by AI.For example, people often talk about fair algorithms or explainable AI, as if fairness and explainability depend solely on the technology and not also on the broader sociotechnical systems in which AI technologies are embedded.Consider, for example, an AI algorithm that is used by a government agency to find potential cases of fraud with social welfare.Fairness in this case no doubt partly depends on the algorithm itself; for example does it meet certain fairness metrics as they have now been proposed in the literature (e.g., Mehrabi et al., 2019)?However, there are multiple and conflicting fairness metrics, and in order to decide on which of these to focus, one first needs to know more about the broader context: what are the main unfairness that might occur in this context?Which people are most vulnerable and dependent on governmental decisions and should be protected from unfair decisions?Even when the choice of fairness metrics is based on contextual considerations, it will make the resulting system not necessarily fair.That will also depend, for example, on the behavior of civil servants and politicians, the political climate with respect to fraud, and on internal rules in the relevant governmental agency.Is there room to deviate from the algorithm's advice?Is the emphasis on finding fraud or avoiding unjust accusations?Are citizens offered the possibility to object to a governmental decision or to provide additional evidence if needed?Also legal rules and institutions will affect the functioning and fairness of the resulting sociotechnical system in which the AI algorithm is embedded.For example, are there independent possibilities to appeal against a decision based on the algorithm's advice?
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Olya Kudina
North-West University
Ibo van de Poel
Delft University of Technology
Minds and Machines
Delft University of Technology
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Kudina et al. (Wed,) studied this question.
synapsesocial.com/papers/68e64f8fb6db6435875e0656 — DOI: https://doi.org/10.1007/s11023-024-09680-2