2022
DOI: 10.48550/arxiv.2207.10896
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Privacy and Transparency in Graph Machine Learning: A Unified Perspective

Abstract: Graph Machine Learning (GraphML), whereby classical machine learning is generalized to irregular graph domains, has enjoyed a recent renaissance, leading to a dizzying array of models and their applications in several domains. With its growing applicability to sensitive domains and regulations by government agencies for trustworthy AI systems, researchers have started looking into the issues of transparency and privacy of graph learning. However, these topics have been mainly investigated independently. In thi… Show more

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