Detecting Concept Drift in Customer Transaction Data
Customer transaction data forms the backbone of financial institutions, e-commerce platforms, and payment processors worldwide. However, these data patterns don’t remain static—they evolve continuously due to changing customer behaviors, market conditions, seasonal trends, and external factors. This evolution, known as concept drift, poses significant challenges for machine learning models that rely on historical data to … Read more