Skip to content

Fraud Detection with Graph Features and GNN

Network event
Photo of TigerGraph
Hosted By
TigerGraph
Fraud Detection with Graph Features and GNN

Details

RSVP HERE TO RECEIVE UPDATES AND ZOOM LINK
Please note the Zoom join link for this event will be emailed to registrants 24 hours prior to the event’s start time. Please register to be notified of the Zoom link. Thank you!

Identifying fraudulent behaviors is becoming increasingly more complex as technology advances and fraudsters constantly evolve new ways to exploit people, companies, and institutions. The complexity grows as companies introduce new channels, platforms, and devices for customers to engage with their brand, manage their accounts, and make transactions.

Graph neural networks (GNN) are increasingly being used to identify suspicious behavior. GNNs can combine graph structures, such as email accounts, addresses, phone numbers, and purchasing behavior to find meaningful patterns and enhance fraud detection.

Join TigerGraph’s Nikita Iserson to learn how graphs are used to uncover fraud.

Agenda:

  • Introduction to TigerGraph
  • Fraud Detection Challenges
  • Graph Model, Data Exploration, and Investigation
  • Visual Rules, Red Flags, and Feature Generation
  • TigerGraph Machine Learning Workbench:
  • XGBoost with Graph Features
  • Graph Neural Network and Explainability

About Your Speaker

Nikita is a Senior ML/AI Architect at TigerGraph with over 10 years of experience in software engineering, data warehouse development, data analytics, and machine learning. He has built demand forecasting, network analysis, recommender systems, digital twins, and much more covering a wide range of industries, including telecom, retail, and banking.

Photo of Graph Data Science | New York group
Graph Data Science | New York
See more events
Online event
This event has passed