This repository provides an implementation of the method proposed in "FraudNE: a Joint Embedding Approach for Fraud Detection", Mengyu Zheng, Chuan Zhou, Jia Wu, Shirui Pan, Jinqiao Shi and Li Guo, IJCNN 2018
input/
contains an example graphs 'zomato.edgelist.400';output/
is the directory to store the learned node embeddings;src/
contains the implementation of the proposed FraudNE method.
The implementation is tested under Pyrhon 2.7, with the folowing packages installed:
networkx==1.11
numpy==1.11.2
tensorflow==1.5
The code takes a bipartite input graph composed users and items. Every row indicates an edge between two nodes, such like:
user_node1_id_int item_node2_id_int weight_int
The file does not contain a header. Nodes can be indexed starting with any non-negative number.
The graph is assumed to be directed and weighted by default.
If you find FraudNE useful for your research, please consider citing the following paper:
@inproceedings{zheng2018fraudne,
title={Fraudne: a joint embedding approach for fraud detection},
author={Zheng, Mengyu and Zhou, Chuan and Wu, Jia and Pan, Shirui and Shi, Jinqiao and Guo, Li},
booktitle={2018 International Joint Conference on Neural Networks (IJCNN)},
pages={1--8},
year={2018},
organization={IEEE}}