Proceedings of the ACM Web Conference 2024 2024
DOI: 10.1145/3589334.3645703
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Endowing Pre-trained Graph Models with Provable Fairness

Zhongjian Zhang,
Mengmei Zhang,
Yue Yu
et al.

Abstract: Pre-trained graph models (PGMs) aim to capture transferable inherent structural properties and apply them to different downstream tasks. Similar to pre-trained language models, PGMs also inherit biases from human society, resulting in discriminatory behavior in downstream applications. The debiasing process of existing fair methods is generally coupled with parameter optimization of GNNs. However, different downstream tasks may be associated with different sensitive attributes in reality, directly employing ex… Show more

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