Graph Analytics for Real-Time Scoring of Cross-Channel Transactional Fraud
نویسندگان
چکیده
We present a new approach to cross channel fraud detection: build graphs representing transactions from all channels and use analytics on features extracted from these graphs. Our underlying hypothesis is community based fraud detection: an account (holder) performs normal or trusted transactions within a community that is “local” to the account. We explore several notions of community based on graph properties. Our results show that properties such as shortest distance between transaction endpoints, whether they are in the same strongly connected component, whether the destination has high page rank, etc., provide excellent discriminators of fraudulent and normal transactions whereas traditional social network analysis yields poor results. Evaluation on a large dataset from a European bank shows that such methods can substantially reduce false positives in traditional fraud scoring. We show that classifiers built purely out of graph properties are very promising, with high AUC, and can complement existing fraud detection approaches.
منابع مشابه
Evolving Databases for New-Gen Big Data Applications
The rising popularity of large-scale real-time analytics applications (real-time inventory/pricing, mobile apps that give you suggestions, fraud detection, risk analysis, etc.) emphasize the need for distributed data management systems that can handle fast transactions and analytics concurrently. Efficient processing of transactional and analytical requests, however, require different optimizat...
متن کاملLexisNexis + Micron SSDs = Faster, More Reliable Big Data Analytics
For several decades, LexisNexis Risk Solutions has provided real-time risk assessment and management services via their easy easy-to-use, big data analytics solutions—building a reputation for precision, speed, and breadth over the years. Now a global organization headquartered in Alpharetta, Georgia, LexisNexis provides services and solutions such as identity management, risk scoring, fraud de...
متن کاملThe Value of Real Time Scoring Technology using SAS
Imagine having built a Data Mining model to detect fraudulent credit card transactions. If this model is applied once a day by the analyst to determine the nature of transaction, this implies the loss of preventing fraudulent transactions at the moment it occurred due to the fact that the model could not be applied in “real-time”, in another words, at the moment of transaction. To overcome this...
متن کاملAccelerating Dynamic Graph Analytics on GPUs
As graph analytics often involves compute-intensive operations, GPUs have been extensively used to accelerate the processing. However, in many applications such as social networks, cyber security, and fraud detection, their representative graphs evolve frequently and one has to perform a rebuild of the graph structure on GPUs to incorporate the updates. Hence, rebuilding the graphs becomes the ...
متن کاملLarge-Scale Graph Analytics in Aster 6: Bringing Context to Big Data Discovery
Graph analytics is an important big data discovery technique. Applications include identifying influential employees for retention, detecting fraud in a complex interaction network, and determining product affinities by exploiting community buying patterns. Specialized platforms have emerged to satisfy the unique processing requirements of large-scale graph analytics; however, these platforms d...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2016