Evaluating Explainability for Graph Neural Networks

08/19/2022
by   Chirag Agarwal, et al.
9

As post hoc explanations are increasingly used to understand the behavior of graph neural networks (GNNs), it becomes crucial to evaluate the quality and reliability of GNN explanations. However, assessing the quality of GNN explanations is challenging as existing graph datasets have no or unreliable ground-truth explanations for a given task. Here, we introduce a synthetic graph data generator, ShapeGGen, which can generate a variety of benchmark datasets (e.g., varying graph sizes, degree distributions, homophilic vs. heterophilic graphs) accompanied by ground-truth explanations. Further, the flexibility to generate diverse synthetic datasets and corresponding ground-truth explanations allows us to mimic the data generated by various real-world applications. We include ShapeGGen and several real-world graph datasets into an open-source graph explainability library, GraphXAI. In addition to synthetic and real-world graph datasets with ground-truth explanations, GraphXAI provides data loaders, data processing functions, visualizers, GNN model implementations, and evaluation metrics to benchmark the performance of GNN explainability methods.

READ FULL TEXT
research
06/23/2021

Reimagining GNN Explanations with ideas from Tabular Data

Explainability techniques for Graph Neural Networks still have a long wa...
research
06/28/2022

BAGEL: A Benchmark for Assessing Graph Neural Network Explanations

The problem of interpreting the decisions of machine learning is a well-...
research
06/22/2021

Towards Automated Evaluation of Explanations in Graph Neural Networks

Explaining Graph Neural Networks predictions to end users of AI applicat...
research
12/31/2020

Explainability in Graph Neural Networks: A Taxonomic Survey

Deep learning methods are achieving ever-increasing performance on many ...
research
10/13/2022

Global Explainability of GNNs via Logic Combination of Learned Concepts

While instance-level explanation of GNN is a well-studied problem with p...
research
02/28/2022

GraphWorld: Fake Graphs Bring Real Insights for GNNs

Despite advances in the field of Graph Neural Networks (GNNs), only a sm...
research
02/23/2023

The Generalizability of Explanations

Due to the absence of ground truth, objective evaluation of explainabili...

Please sign up or login with your details

Forgot password? Click here to reset