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Most Influential UAI 2021 Paper · 2026-03 edition

Towards A Unified Framework for Fair and Stable Graph Representation Learning

Chirag Agarwal; Himabindu Lakkaraju; Marinka Zitnik

Venue
Conference on Uncertainty in Artificial Intelligence (UAI) 2021
Recognition
Most Influential UAI 2021 Paper (Rank No. 3)
Edition
2026-03
Impact factor
4
Certificate ID
24659a16dea393a0

Abstract

As the representations output by Graph Neural Networks (GNNs) are increasingly employed in real-world applications, it becomes important to ensure that these representations are fair and stable. In this work, we establish a key connection between counterfactual fairness and stability and leverage it to propose a novel framework, NIFTY (uNIfying Fairness and stabiliTY), which can be used with any GNN to learn fair and stable representations. We introduce a novel objective function that simultaneously accounts for fairness and stability and develop a layer-wise weight normalization using the Lipschitz constant to enhance neural message passing in GNNs. In doing so, we enforce fairness and stability both in the objective function as well as in the GNN architecture. Further, we show theoretically that our layer-wise weight normalization promotes counterfactual fairness and stability in the resulting representations. We introduce three new graph datasets comprising of high-stakes decisions in criminal justice and financial lending domains. Extensive experimentation with the above datasets demonstrates the efficacy of our framework.

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