TL;DR
EDITS is a framework that reduces bias in attributed networks to improve fairness in GNNs without depending on specific GNN models, demonstrated through effective bias mitigation and maintained performance.
Contribution
The paper introduces a model-agnostic framework, EDITS, for debiasing attributed networks to enhance fairness in GNNs across various architectures.
Findings
Proposed new bias metrics for attributed networks.
EDITS effectively reduces bias in networks.
Maintains GNN performance while improving fairness.
Abstract
Graph Neural Networks (GNNs) have shown superior performance in analyzing attributed networks in various web-based applications such as social recommendation and web search. Nevertheless, in high-stake decision-making scenarios such as online fraud detection, there is an increasing societal concern that GNNs could make discriminatory decisions towards certain demographic groups. Despite recent explorations on fair GNNs, these works are tailored for a specific GNN model. However, myriads of GNN variants have been proposed for different applications, and it is costly to fine-tune existing debiasing algorithms for each specific GNN architecture. Different from existing works that debias GNN models, we aim to debias the input attributed network to achieve fairer GNNs through feeding GNNs with less biased data. Specifically, we propose novel definitions and metrics to measure the bias in an…
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