Citation

BibTex format

@inproceedings{Rago:2025,
author = {Rago, A and Vasileiou, SL and Tran, S and Toni, F and Yeoh, W},
publisher = {International Joint Conferences on Artificial Intelligence Organization},
title = {A methodology for incompleteness-tolerant and modular gradual semantics for argumentative statement graphs},
year = {2025}
}

RIS format (EndNote, RefMan)

TY  - CPAPER
AB - Gradual semantics (GS) have demonstrated great potential in argumentation, in particular for deploying quantitative bipolar argumentation frameworks (QBAFs) in a number of real-world settings, from judgmental forecasting to explainable AI. In this paper, we provide a novel methodology for obtaining GS for statement graphs, a form of structured argumentation framework, where arguments and relations between them are built from logical statements. Our methodology differs from existing approaches in the literature in two main ways. First, it naturally accommodates incomplete information, so that arguments with partially specified premises can play ameaningful role in the evaluation. Second, it is modularlydefined to leverage on any GS for QBAFs. We also define aset of novel properties for our GS and study their suitabilityalongside a set of existing properties (adapted to our setting) for two instantiations of our GS, demonstrating their advantages over existing approaches.
AU - Rago,A
AU - Vasileiou,SL
AU - Tran,S
AU - Toni,F
AU - Yeoh,W
PB - International Joint Conferences on Artificial Intelligence Organization
PY - 2025///
TI - A methodology for incompleteness-tolerant and modular gradual semantics for argumentative statement graphs
ER -

Contact us

Artificial Intelligence Network
South Kensington Campus
Imperial College London
SW7 2AZ

To reach the elected speaker of the network, Dr Rossella Arcucci, please contact:

ai-speaker@imperial.ac.uk

To reach the network manager, Diana O'Malley - including to join the network - please contact:

ai-net-manager@imperial.ac.uk