ABA Learning via ASP

Emanuele De Angelis
(IASI-CNR, Rome, Italy)
Maurizio Proietti
(IASI-CNR, Rome, Italy)
Francesca Toni
(Department of Computing, Imperial College London, UK)

Recently, ABA Learning has been proposed as a form of symbolic machine learning for drawing Assumption-Based Argumentation frameworks from background knowledge and positive and negative examples. We propose a novel method for implementing ABA Learning using Answer Set Programming as a way to help guide Rote Learning and generalisation in ABA Learning.

In Enrico Pontelli, Stefania Costantini, Carmine Dodaro, Sarah Gaggl, Roberta Calegari, Artur D'Avila Garcez, Francesco Fabiano, Alessandra Mileo, Alessandra Russo and Francesca Toni: Proceedings 39th International Conference on Logic Programming (ICLP 2023), Imperial College London, UK, 9th July 2023 - 15th July 2023, Electronic Proceedings in Theoretical Computer Science 385, pp. 1–8.
Published: 12th September 2023.

ArXived at: https://dx.doi.org/10.4204/EPTCS.385.1 bibtex PDF
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