BibTex format
@inproceedings{Gehlot:2025,
author = {Gehlot, P and Rapberger, A and Russo, F and Toni, F},
pages = {14--25},
title = {Heterogeneous graph neural networks for credulous acceptance of assumptions in ABA},
url = {https://hal.science/hal-05339535v1},
year = {2025}
}
RIS format (EndNote, RefMan)
TY - CPAPER
AB - Assumption-Based Argumentation (ABA) is a powerful structured argumentation formalism, but exact com-putation of extensions under stable semantics is intractable for large frameworks. We present the first Graph Neural Network (GNN) approach to approximate credulous acceptance in ABA. To use GNNs, we represent ABA frameworks via a dependency graph representation that encodes atoms and rules as nodes and distinguishessupport, derive and attack relations by heterogeneous edge labels. We propose two GNN variants—ABAGCNand ABAGAT—that stack residual heterogeneous convolution or attention blocks, respectively, to learn nodeembeddings. Our models are trained on the ICCMA2023 benchmark, augmented with synthetic ABAFs, withhyperparameters optimised via Bayesian search. Empirically, both ABAGCN and ABAGAT outperform a state-of-the-art GNN baseline that we adapt from the abstract argumentation literature, achieving node-level an F1 score up to 0.71 on the ICCMA instances. Finally, we develop a poly-time extension-reconstruction algorithm driven by our predictor: it reconstructs stable extensions with F1 above 0.85 on small ABAFs and maintains an F1 ofabout 0.58 on frameworks with 1,000 atoms. Our work opens new avenues for scalable approximate reasoning instructured argumentation.
AU - Gehlot,P
AU - Rapberger,A
AU - Russo,F
AU - Toni,F
EP - 25
PY - 2025///
SP - 14
TI - Heterogeneous graph neural networks for credulous acceptance of assumptions in ABA
UR - https://hal.science/hal-05339535v1
ER -