InfDetect: a Large Scale Graph-based Fraud Detection System for
E-Commerce Insurance
- URL: http://arxiv.org/abs/2003.02833v3
- Date: Thu, 12 Mar 2020 09:24:50 GMT
- Title: InfDetect: a Large Scale Graph-based Fraud Detection System for
E-Commerce Insurance
- Authors: Cen Chen, Chen Liang, Jianbin Lin, Li Wang, Ziqi Liu, Xinxing Yang,
Xiukun Wang, Jun Zhou, Yang Shuang, Yuan Qi
- Abstract summary: InfDetect is able to process big graphs containing up to 100 millions of nodes and billions of edges.
In this paper, we investigate different graphs to facilitate fraudster mining, such as a device-sharing graph, a transaction graph, a friendship graph, and a buyer-seller graph.
InfDetect has successfully detected thousands of fraudulent claims and saved over tens of thousands of dollars daily.
- Score: 24.49258957908707
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The insurance industry has been creating innovative products around the
emerging online shopping activities. Such e-commerce insurance is designed to
protect buyers from potential risks such as impulse purchases and counterfeits.
Fraudulent claims towards online insurance typically involve multiple parties
such as buyers, sellers, and express companies, and they could lead to heavy
financial losses. In order to uncover the relations behind organized fraudsters
and detect fraudulent claims, we developed a large-scale insurance fraud
detection system, i.e., InfDetect, which provides interfaces for commonly used
graphs, standard data processing procedures, and a uniform graph learning
platform. InfDetect is able to process big graphs containing up to 100 millions
of nodes and billions of edges. In this paper, we investigate different graphs
to facilitate fraudster mining, such as a device-sharing graph, a transaction
graph, a friendship graph, and a buyer-seller graph. These graphs are fed to a
uniform graph learning platform containing supervised and unsupervised graph
learning algorithms. Cases on widely applied e-commerce insurance are described
to demonstrate the usage and capability of our system. InfDetect has
successfully detected thousands of fraudulent claims and saved over tens of
thousands of dollars daily.
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