Date: 2020
Type: Article
Argumentation and logic programming for explainable and ethical AI
CEUR workshop proceedings, 2020, Vol. 2742, pp. 55-68
CALEGARI, Roberta, OMICINI, Andrea, SARTOR, Giovanni, Argumentation and logic programming for explainable and ethical AI, CEUR workshop proceedings, 2020, Vol. 2742, pp. 55-68
- https://hdl.handle.net/1814/76643
Retrieved from Cadmus, EUI Research Repository
In this paper we sketch a vision of explainability of intelligent systems as a logic approach suitable to be injected into and exploited by the system actors once integrated with sub-symbolic techniques. In particular, we show how argumentation could be combined with different extensions of logic programming – namely, abduction, inductive logic programming, and probabilistic logic programming – to address the issues of explainable AI as well as some ethical concerns about AI.
Additional information:
Published online: 15 November 2020
Cadmus permanent link: https://hdl.handle.net/1814/76643
ISSN: 1613-0073
Publisher: Rheinisch-Westfaelische Technische Hochschule Aachen
Grant number: H2020/833647/EU; H2020/825619/EU
Sponsorship and Funder information:
Roberta Calegari and Giovanni Sartor have been supported by the H2020 ERC Project “CompuLaw” (G.A. 833647). Andrea Omicini has been partially supported by the H2020 Project “AI4EU” (G.A. 825619).
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