DGFraud
Fraud detector
A toolbox for building and comparing graph neural network-based fraud detection models
A Deep Graph-based Toolbox for Fraud Detection
698 stars
15 watching
159 forks
Language: Python
last commit: almost 3 years ago
Linked from 1 awesome list
anomaly-detectiondataminingdatasciencedblp-datasetfinancial-engineeringfraud-detectionfraud-preventiongraphgraph-algorithmsgraph-convolutional-networksgraph-neural-networksgraphneuralnetworkmachine-learningopensourceoutlier-detectionsecuritysecurity-toolsspamdetectiontoolkityelp-dataset
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