arXiv Open Access 2023

HiTZ@Antidote: Argumentation-driven Explainable Artificial Intelligence for Digital Medicine

Rodrigo Agerri Iñigo Alonso Aitziber Atutxa Ander Berrondo Ainara Estarrona +7 lainnya
Lihat Sumber

Abstrak

Providing high quality explanations for AI predictions based on machine learning is a challenging and complex task. To work well it requires, among other factors: selecting a proper level of generality/specificity of the explanation; considering assumptions about the familiarity of the explanation beneficiary with the AI task under consideration; referring to specific elements that have contributed to the decision; making use of additional knowledge (e.g. expert evidence) which might not be part of the prediction process; and providing evidence supporting negative hypothesis. Finally, the system needs to formulate the explanation in a clearly interpretable, and possibly convincing, way. Given these considerations, ANTIDOTE fosters an integrated vision of explainable AI, where low-level characteristics of the deep learning process are combined with higher level schemes proper of the human argumentation capacity. ANTIDOTE will exploit cross-disciplinary competences in deep learning and argumentation to support a broader and innovative view of explainable AI, where the need for high-quality explanations for clinical cases deliberation is critical. As a first result of the project, we publish the Antidote CasiMedicos dataset to facilitate research on explainable AI in general, and argumentation in the medical domain in particular.

Topik & Kata Kunci

Penulis (12)

R

Rodrigo Agerri

I

Iñigo Alonso

A

Aitziber Atutxa

A

Ander Berrondo

A

Ainara Estarrona

I

Iker Garcia-Ferrero

I

Iakes Goenaga

K

Koldo Gojenola

M

Maite Oronoz

I

Igor Perez-Tejedor

G

German Rigau

A

Anar Yeginbergenova

Format Sitasi

Agerri, R., Alonso, I., Atutxa, A., Berrondo, A., Estarrona, A., Garcia-Ferrero, I. et al. (2023). HiTZ@Antidote: Argumentation-driven Explainable Artificial Intelligence for Digital Medicine. https://arxiv.org/abs/2306.06029

Akses Cepat

Lihat di Sumber
Informasi Jurnal
Tahun Terbit
2023
Bahasa
en
Sumber Database
arXiv
Akses
Open Access ✓