2023
DOI: 10.3389/fpos.2023.1238461
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Human involvement in autonomous decision-making systems. Lessons learned from three case studies in aviation, social care and road vehicles

Pericle Salvini,
Tyler Reinmund,
Benjamin Hardin
et al.

Abstract: This paper draws on three case studies to examine some of the challenges and tensions involved in the use of Autonomous Decision-Making Systems (ADMS). In particular, the paper highlights: (i) challenges around the shifting “locale” of the decision, and the associated consequences for stakeholders; (ii) potential implications for stakeholders from regulation such as the General Data Protection Regulation (GDPR); (iii) the different values that stakeholder groups bring to the “decision” question; (iv) how compl… Show more

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Cited by 2 publications
(1 citation statement)
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“…However, Human decision-making typically relies on a myriad of contextual factors, and many of these factors are extremely difficult to distill into discrete data streams and assign different weights. This level of nuanced decision-making is challenging for autonomous systems to fully replicate, and they are also susceptible to errors and biases, including false positives and omissions [55]. Consequently, if the system autonomously makes decisions, the ramifications of incorrect choices could lead to extremely serious consequences [56].…”
Section: Our Methodsmentioning
confidence: 99%
“…However, Human decision-making typically relies on a myriad of contextual factors, and many of these factors are extremely difficult to distill into discrete data streams and assign different weights. This level of nuanced decision-making is challenging for autonomous systems to fully replicate, and they are also susceptible to errors and biases, including false positives and omissions [55]. Consequently, if the system autonomously makes decisions, the ramifications of incorrect choices could lead to extremely serious consequences [56].…”
Section: Our Methodsmentioning
confidence: 99%