Graph representation learning is central for the application of machine learning (ML) models to complex graphs, such as social networks. Ensuring `fair' representations is essential, due to the societal implications and the use of sensitive personal data. In this paper, we demonstrate how the parametrization of the \emph{CrossWalk} algorithm influences the ability to infer a sensitive attributes from node embeddings. By fine-tuning hyperparameters, we show that it is possible to either significantly enhance or obscure the detectability of these attributes. This functionality offers a valuable tool for improving the fairness of ML systems utilizing graph embeddings, making them adaptable to different fairness paradigms.
@article{arxiv.2407.20024,
title = {Fairness Through Controlled (Un)Awareness in Node Embeddings},
author = {Dennis Vetter and Jasper Forth and Gemma Roig and Holger Dell},
journal= {arXiv preprint arXiv:2407.20024},
year = {2024}
}
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Poster at ICML 2024 Workshop on the Next Generation of AI Safety