Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

GraphSVX: Shapley Value Explanations for Graph Neural Networks

About

Graph Neural Networks (GNNs) achieve significant performance for various learning tasks on geometric data due to the incorporation of graph structure into the learning of node representations, which renders their comprehension challenging. In this paper, we first propose a unified framework satisfied by most existing GNN explainers. Then, we introduce GraphSVX, a post hoc local model-agnostic explanation method specifically designed for GNNs. GraphSVX is a decomposition technique that captures the "fair" contribution of each feature and node towards the explained prediction by constructing a surrogate model on a perturbed dataset. It extends to graphs and ultimately provides as explanation the Shapley Values from game theory. Experiments on real-world and synthetic datasets demonstrate that GraphSVX achieves state-of-the-art performance compared to baseline models while presenting core theoretical and human-centric properties.

Alexandre Duval, Fragkiskos D. Malliaros• 2021

Related benchmarks

TaskDatasetResultRank
Graph ExplanationIMDB
Fidelity (Negative)93.4
18
Graph ExplanationDBLP
Fidelity -97
18
Graph ExplanationACM
Fidelity (-)94.6
18
GNN ExplanationBBBP
H-Fidelity53.45
6
GNN ExplanationMUTAG
H-Fidelity52.11
6
GNN ExplanationTwitter
H-Fidelity0.4989
6
GNN ExplanationBA2Motifs
H-Fidelity50.17
6
GNN ExplanationBACE
H-Fidelity0.5067
6
GNN ExplanationGraphSST2
H-Fidelity50.53
6
Showing 9 of 9 rows

Other info

Follow for update