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Finding NeMo: Fishing in banking networks using network motifs

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arxiv 2108.04494 v1 pith:RY2P3JC7 submitted 2021-08-10 cs.SI

Finding NeMo: Fishing in banking networks using network motifs

classification cs.SI
keywords networkbankingmotifsfraudgraphspatternsheterogeneoustransaction
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Banking fraud causes billion-dollar losses for banks worldwide. In fraud detection, graphs help understand complex transaction patterns and discovering new fraud schemes. This work explores graph patterns in a real-world transaction dataset by extracting and analyzing its network motifs. Since banking graphs are heterogeneous, we focus on heterogeneous network motifs. Additionally, we propose a novel network randomization process that generates valid banking graphs. From our exploratory analysis, we conclude that network motifs extract insightful and interpretable patterns.

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