How is machine learning used in finance?
From screening and approving loans to managing assets and preventing fraud, machine learning plays a crucial role on many levels in financial institutions. In this blog post, we’ll explore some ways that machine learning improves business processes in the financial sector. Customer segmentation Machine learning algorithms are far more effective for personalizing your customer experience than entire teams of employees. Simple demographics can’t fully explain actual consumer behavior, so financial organizations should use machine learning to segment consumers by their level of sophistication and financial acumen, and then customize products and services accordingly. All relevant customer interaction data is used to train these algorithms, which then automatically builds statistical models that help correlate customers’ preferences with their demographic, behavioral, and other characteristics. “Next Best Offer” recommendation The “Next Best Offer” strategy can provide personalized financial product and service recommendations for each customer by analyzing past behavior. This technique uses collaborative filtering (CF), a specialized component of machine learning. User-based CF uses the opinions and behavior of similar customers to predict a specific customer’s inclination towards purchasing a specific product, while product-based CF identifies products that customers have exhibited a similar preference for. If executed properly, this is a win-win approach: customers get their desired products and services, and financial institutions develop valuable relationships with their customers.