27th EAAAI (EANN) 2026, 16 - 19 July 2026, Chania, Crete, Greece

Normalisation and Initialisation Strategies for Graph Neural Networks in Blockchain Anomaly Detection

Dang Duy, Nguyen Chien, Dev Kapil, Nijsse Jeff

Abstract:

  Graph neural networks (GNNs) offer a principled approach to financial fraud detection by jointly learning from node features and transaction graph topology. However, their effectiveness on real-world anti-money laundering (AML) benchmarks depends critically on training practices such as specifically weight initialisation and normalisation that remain underexplored. We present a controlled empirical study of initialisation and normalisation strategies across three GNN architectures (GCN, GAT, and GraphSAGE) on the Elliptic Bitcoin dataset. Our experiments reveal that initialisation and normalisation are architecture-dependent: GraphSAGE achieves the strongest performance with Xavier initialisation alone, GAT benefits most from combining GraphNorm with Xavier initialisation, while GCN shows limited sensitivity to these modifications. These findings offer practical, architecture-specific guidance for training GNNs in AML pipelines under challenging conditions such as class imbalance and temporal drift.  

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