Big Data Scoring
Big Data Scoring refers to the use of advanced data analytics and machine learning techniques to assess the creditworthiness or risk profile of individuals or businesses by analyzing vast amounts of data from various sources. Unlike traditional credit scoring methods that rely primarily on financial history and credit reports, big data scoring incorporates diverse data points such as social media activity, online behavior, transaction history, and other digital footprints.
Example
A fintech company might use big data scoring to evaluate a loan applicant by analyzing their social media activity, transaction history, and other non-traditional data points, in addition to their credit report.
Key points
• Uses advanced analytics and machine learning to assess creditworthiness.
• Analyzes diverse data sources beyond traditional credit reports.
• Provides more accurate and dynamic risk assessments, especially for those with limited credit history.