Are consumers paying their retail cards on time?

by Guest Contributor 1 min read March 12, 2012

While retail card utilization rates decreased slightly in Q3 2011, retail card delinquency rates increased for all performance bands (30-59, 60-89 and 90-180 days past due) in Q3 2011 after reaching multiyear lows the previous quarter.

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Source: Experian-Oliver Wyman Market Intelligence Reports

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The platform’s No-Model Data-Driven technology leverages big data, econometric analysis, and AI to help traders identify relative-value opportunities in RMBS markets and generate above-market, risk-adjusted returns. _____________________________________________________

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