LGAICYDec 19, 2023

Chasing Fairness in Graphs: A GNN Architecture Perspective

arXiv:2312.12369v122 citationsh-index: 24Has CodeAAAI
Originality Highly original
AI Analysis

This addresses fairness issues in GNNs for applications like social network analysis, offering a novel architectural approach rather than incremental improvements.

The paper tackles the problem of fairness in graph neural networks (GNNs) by proposing a new architecture called Fair Message Passing (FMP), which explicitly mitigates bias during forward propagation without data pre-processing, resulting in improved fairness and accuracy on node classification tasks across three real-world datasets.

There has been significant progress in improving the performance of graph neural networks (GNNs) through enhancements in graph data, model architecture design, and training strategies. For fairness in graphs, recent studies achieve fair representations and predictions through either graph data pre-processing (e.g., node feature masking, and topology rewiring) or fair training strategies (e.g., regularization, adversarial debiasing, and fair contrastive learning). How to achieve fairness in graphs from the model architecture perspective is less explored. More importantly, GNNs exhibit worse fairness performance compared to multilayer perception since their model architecture (i.e., neighbor aggregation) amplifies biases. To this end, we aim to achieve fairness via a new GNN architecture. We propose \textsf{F}air \textsf{M}essage \textsf{P}assing (FMP) designed within a unified optimization framework for GNNs. Notably, FMP \textit{explicitly} renders sensitive attribute usage in \textit{forward propagation} for node classification task using cross-entropy loss without data pre-processing. In FMP, the aggregation is first adopted to utilize neighbors' information and then the bias mitigation step explicitly pushes demographic group node presentation centers together. In this way, FMP scheme can aggregate useful information from neighbors and mitigate bias to achieve better fairness and prediction tradeoff performance. Experiments on node classification tasks demonstrate that the proposed FMP outperforms several baselines in terms of fairness and accuracy on three real-world datasets. The code is available in {\url{https://github.com/zhimengj0326/FMP}}.

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