Evaluating explainability for graph neural networks

C Agarwal, O Queen, H Lakkaraju, M Zitnik - Scientific Data, 2023 - nature.com
As explanations are increasingly used to understand the behavior of graph neural networks
(GNNs), evaluating the quality and reliability of GNN explanations is crucial. However …

Are defenses for graph neural networks robust?

F Mujkanovic, S Geisler… - Advances in Neural …, 2022 - proceedings.neurips.cc
A cursory reading of the literature suggests that we have made a lot of progress in designing
effective adversarial defenses for Graph Neural Networks (GNNs). Yet, the standard …

Bond: Benchmarking unsupervised outlier node detection on static attributed graphs

K Liu, Y Dou, Y Zhao, X Ding, X Hu… - Advances in …, 2022 - proceedings.neurips.cc
Detecting which nodes in graphs are outliers is a relatively new machine learning task with
numerous applications. Despite the proliferation of algorithms developed in recent years for …

Trustworthy graph neural networks: Aspects, methods and trends

H Zhang, B Wu, X Yuan, S Pan, H Tong… - arxiv preprint arxiv …, 2022 - arxiv.org
Graph neural networks (GNNs) have emerged as a series of competent graph learning
methods for diverse real-world scenarios, ranging from daily applications like …

Adversarial attack and defense on graph data: A survey

L Sun, Y Dou, C Yang, K Zhang, J Wang… - … on Knowledge and …, 2022 - ieeexplore.ieee.org
Deep neural networks (DNNs) have been widely applied to various applications, including
image classification, text generation, audio recognition, and graph data analysis. However …

Adversarial training for graph neural networks: Pitfalls, solutions, and new directions

L Gosch, S Geisler, D Sturm… - Advances in …, 2024 - proceedings.neurips.cc
Despite its success in the image domain, adversarial training did not (yet) stand out as an
effective defense for Graph Neural Networks (GNNs) against graph structure perturbations …

Adversarial robustness in graph neural networks: A Hamiltonian approach

K Zhao, Q Kang, Y Song, R She… - Advances in Neural …, 2024 - proceedings.neurips.cc
Graph neural networks (GNNs) are vulnerable to adversarial perturbations, including those
that affect both node features and graph topology. This paper investigates GNNs derived …

On the robustness of graph neural diffusion to topology perturbations

Y Song, Q Kang, S Wang, K Zhao… - Advances in Neural …, 2022 - proceedings.neurips.cc
Neural diffusion on graphs is a novel class of graph neural networks that has attracted
increasing attention recently. The capability of graph neural partial differential equations …

Evennet: Ignoring odd-hop neighbors improves robustness of graph neural networks

R Lei, Z Wang, Y Li, B Ding… - Advances in Neural …, 2022 - proceedings.neurips.cc
Abstract Graph Neural Networks (GNNs) have received extensive research attention for their
promising performance in graph machine learning. Despite their extraordinary predictive …

AI robustness: a human-centered perspective on technological challenges and opportunities

A Tocchetti, L Corti, A Balayn, M Yurrita… - ACM Computing …, 2022 - dl.acm.org
Despite the impressive performance of Artificial Intelligence (AI) systems, their robustness
remains elusive and constitutes a key issue that impedes large-scale adoption. Besides …