Responsibility gaps and the reactive attitudes
Tollon F (2023)
AI and Ethics 3(1): 295-302.
Zeitschriftenaufsatz
| Veröffentlicht | Englisch
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Abstract / Bemerkung
**Abstract**
Artificial Intelligence (AI) systems are ubiquitous. From social media timelines, video recommendations on YouTube, and the kinds of adverts we see online, AI, in a very real sense, filters the world we see. More than that, AI is being embedded in agent-like systems, which might prompt certain reactions from users. Specifically, we might find ourselves feeling frustrated if these systems do not meet our expectations. In normal situations, this might be fine, but with the ever increasing sophistication of AI-systems, this might become a problem. While it seems unproblematic to realize that being angry at your car for breaking down is unfitting, can the same be said for AI-systems? In this paper, therefore, I will investigate the so-called “reactive attitudes”, and their important link to our responsibility practices. I then show how within this framework there exist exemption and excuse conditions, and test whether our adopting the “objective attitude” toward agential AI is justified. I argue that such an attitude is appropriate in the context of three distinct senses of responsibility (answerability, attributability, and accountability), and that, therefore, AI-systems do not undermine our responsibility ascriptions.
Artificial Intelligence (AI) systems are ubiquitous. From social media timelines, video recommendations on YouTube, and the kinds of adverts we see online, AI, in a very real sense, filters the world we see. More than that, AI is being embedded in agent-like systems, which might prompt certain reactions from users. Specifically, we might find ourselves feeling frustrated if these systems do not meet our expectations. In normal situations, this might be fine, but with the ever increasing sophistication of AI-systems, this might become a problem. While it seems unproblematic to realize that being angry at your car for breaking down is unfitting, can the same be said for AI-systems? In this paper, therefore, I will investigate the so-called “reactive attitudes”, and their important link to our responsibility practices. I then show how within this framework there exist exemption and excuse conditions, and test whether our adopting the “objective attitude” toward agential AI is justified. I argue that such an attitude is appropriate in the context of three distinct senses of responsibility (answerability, attributability, and accountability), and that, therefore, AI-systems do not undermine our responsibility ascriptions.
Stichworte
Reactive attitudes;
Responsibility gaps;
Artificial intelligence
Erscheinungsjahr
2023
Zeitschriftentitel
AI and Ethics
Band
3
Ausgabe
1
Seite(n)
295-302
Urheberrecht / Lizenzen
ISSN
2730-5953
eISSN
2730-5961
Finanzierungs-Informationen
Open-Access-Publikationskosten wurden durch die Universität Bielefeld im Rahmen des DEAL-Vertrags gefördert.
Page URI
https://pub.uni-bielefeld.de/record/2984768
Zitieren
Tollon F. Responsibility gaps and the reactive attitudes. AI and Ethics. 2023;3(1):295-302.
Tollon, F. (2023). Responsibility gaps and the reactive attitudes. AI and Ethics, 3(1), 295-302. https://doi.org/10.1007/s43681-022-00172-6
Tollon, Fabio. 2023. “Responsibility gaps and the reactive attitudes”. AI and Ethics 3 (1): 295-302.
Tollon, F. (2023). Responsibility gaps and the reactive attitudes. AI and Ethics 3, 295-302.
Tollon, F., 2023. Responsibility gaps and the reactive attitudes. AI and Ethics, 3(1), p 295-302.
F. Tollon, “Responsibility gaps and the reactive attitudes”, AI and Ethics, vol. 3, 2023, pp. 295-302.
Tollon, F.: Responsibility gaps and the reactive attitudes. AI and Ethics. 3, 295-302 (2023).
Tollon, Fabio. “Responsibility gaps and the reactive attitudes”. AI and Ethics 3.1 (2023): 295-302.
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