Fairness-Aware Graph Neural Networks: A Survey

Author:

Chen April1ORCID,Rossi Ryan A.2ORCID,Park Namyong3ORCID,Trivedi Puja4ORCID,Wang Yu5ORCID,Yu Tong2ORCID,Kim Sungchul2ORCID,Dernoncourt Franck6ORCID,Ahmed Nesreen K.7ORCID

Affiliation:

1. Harvard University, Cambridge, United States

2. Adobe Research, San Jose, United States

3. Carnegie Mellon University, Pittsburgh, United States

4. University of Michigan, Ann Arbor, United States

5. Vanderbilt University, Nashville, United States

6. Adobe Research, Seattle, United States

7. Intel Labs, Santa Clara, United States

Abstract

Graph Neural Networks (GNNs) have become increasingly important due to their representational power and state-of-the-art predictive performance on many fundamental learning tasks. Despite this success, GNNs suffer from fairness issues that arise as a result of the underlying graph data and the fundamental aggregation mechanism that lies at the heart of the large class of GNN models. In this article, we examine and categorize fairness techniques for improving the fairness of GNNs. We categorize these techniques by whether they focus on improving fairness in the pre-processing, in-processing (during training), or post-processing phases. We discuss how such techniques can be used together whenever appropriate and highlight the advantages and intuition as well. We also introduce an intuitive taxonomy for fairness evaluation metrics, including graph-level fairness, neighborhood-level fairness, embedding-level fairness, and prediction-level fairness metrics. In addition, graph datasets that are useful for benchmarking the fairness of GNN models are summarized succinctly. Finally, we highlight key open problems and challenges that remain to be addressed.

Publisher

Association for Computing Machinery (ACM)

Reference117 articles.

1. A Comprehensive Survey on Graph Neural Networks

2. On the interaction between node fairness and edge privacy in graph neural networks;Zhang He;arXiv preprint arXiv:2301.12951,2023

3. Graph learning with localized neighborhood fairness;Chen April;arXiv preprint arXiv:2212.12040,2022

4. Adversarial Inter-Group Link Injection Degrades the Fairness of Graph Neural Networks

5. GUIDE: Group Equality Informed Individual Fairness in Graph Neural Networks

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