Suspicious Massive Registration Detection via Dynamic Heterogeneous Graph Neural Networks
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Datum
2021-02Typ
- Conference Paper
ETH Bibliographie
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Abstract
Massive account registration has raised concerns on risk management in e-commerce companies, especially when registration increases rapidly within a short time frame. To monitor these registrations constantly and minimize the potential loss they might incur, detecting massive registration and predicting their riskiness are necessary.
In this paper, we propose a Dynamic Heterogeneous Graph Neural Network framework to capture suspicious massive registrations (DHGReg). We first construct a dynamic heterogeneous graph from the registration data, which is composed of a structural subgraph and a temporal subgraph. Then, we design an efficient architecture to predict suspicious/benign accounts. Our proposed model outperforms the baseline models and is computationally efficient in processing a dynamic heterogeneous graph constructed from a real-world dataset. In practice, the DHGReg framework would benefit the detection of suspicious registration behaviors at an early stage. Mehr anzeigen
Publikationsstatus
publishedBuchtitel
Deep Learning on Graphs: Method and Applications (DLG-AAAI’21). Accepted PapersVerlag
AAAIKonferenz
Organisationseinheit
09588 - Zhang, Ce (ehemalig) / Zhang, Ce (former)
03840 - Egger, Peter / Egger, Peter
Anmerkungen
Due to the Coronavirus (COVID-19) the conference was conducted virtually.ETH Bibliographie
yes
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