2023
DOI: 10.48550/arxiv.2302.02101
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GRANDE: a neural model over directed multigraphs with application to anti-money laundering

Abstract: The application of graph representation learning techniques to the area of financial risk management (FRM) has attracted significant attention recently. However, directly modeling transaction networks using graph neural models remains challenging: Firstly, transaction networks are directed multigraphs by nature, which could not be properly handled with most of the current off-the-shelf graph neural networks (GNN). Secondly, a crucial problem in FRM scenarios like anti-money laundering (AML) is to identify risk… Show more

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