This document discusses fraud detection using graph learning. It notes that fraud numbers are increasing each year as fraud becomes more complex and organized. Graph learning can help by providing a unified view of disparate data sources and enabling new insights through novel data connections. For corporations, fraud detection is predictive, while for legal enforcement agencies (LEAs) it is also investigative. Graph learning helps LEAs unify data from multiple sources and identify syndicates through community detection. While unifying data is challenging due to legacy systems and information silos, graph representations allow visualizing and computing on unified data. The document demonstrates how graphs can present relevant transaction details and connections to support fraud investigations. It recommends an approach using domain expertise, latest technologies, and