Heterogeneous Graph Neural Networks for Malicious Account Detection

27 Feb 2020Ziqi LiuChaochao ChenXinxing YangJun ZhouXiaolong LiLe Song

We present, GEM, the first heterogeneous graph neural network approach for detecting malicious accounts at Alipay, one of the world's leading mobile cashless payment platform. Our approach, inspired from a connected subgraph approach, adaptively learns discriminative embeddings from heterogeneous account-device graphs based on two fundamental weaknesses of attackers, i.e. device aggregation and activity aggregation... (read more)

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