The Automotive Finance Market Stabilizes; Data Indicates a Shift in Lending Strategies

by Melinda Zabritski 3 min read June 5, 2025

Car

Amid interest rates leveling out and some lenders reassessing go-to-market strategies, the automotive finance landscape is experiencing notable shifts in market share.

According to Experian’s State of the Automotive Finance Market Report: Q1 2025, banks recouped some of their total finance market share for the first time in several years, reaching 26.6% during the quarter, up from 24.8% a year ago. On the other hand, captives’ total market share declined from 31.3% to 29.8% year-over-year and credit unions experienced a modest increase from 20.2% to 20.6%.

Despite the overall market share shifts, captives continue to lead in new vehicle financing at 57.1% in Q1 2025, although down from 62.1% the year prior. Meanwhile, banks increased to 24.1% this quarter, from 20.4% in Q1 2024 and credit unions went from 9.6% to 10.9% during the same period.

On the used side, banks and credit unions were grouped much closer together. Banks led the way with 28.4% of the used finance market in Q1 2025, up from 27.9% last year, while credit unions went from 27.7% to 28.2% year-over-year and captives declined from 8.5% to 7.4%.

As market share movement continues to be a valuable indicator of shifting strategies and consumer behavior, it’s important for automotive professionals to keep a close eye on these shifts to uncover new opportunities while looking for ways to stay ahead of the rapidly evolving industry.

Breaking down the latest finance trends

Data in the first quarter of 2025 shows the automotive finance market continues to stabilize as automotive professionals gain clearer visibility into lender behavior and consumer demand.

For example, the average loan amount for a new vehicle increased $1,110 year-over-year to $41,720 in Q1 2025. However, the average interest rate dropped from 6.9% to 6.7%, and the average monthly payment went from $737 last year to $745 this quarter.

For used vehicles, the average loan amount saw a slight uptick of $90 year-over-year, reaching $26,144 this quarter. Meanwhile, the average interest rate declined from 12.4% last year to 11.9% this quarter and the average monthly payment trended lower at $521, from $524 in Q1 2024.

Monitoring and leveraging market share shifts and financing trends can support strategic planning while empowering automotive professionals to anticipate consumer purchasing patterns and tailor conversations more effectively to meet buyers where they are during their car buying journey.

To learn more about automotive finance trends, view the full State of the Automotive Finance Market: Q1 2025 presentation on demand.

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As illustrated in Figure 1, for in-the-money (ITM) collateral, the differential between loans with material student loan balances (greater than $200,000) and loans with no student debt can reach up to 5 CPR. Notably, even for out-of-the-money (OTM) collateral, loans with student debt prepay 1 to 3 CPR slower, likely reflecting reduced mobility due to tighter financing constraints when purchasing a new home. Pools with otherwise similar prepayment characteristics may exhibit different prepayment behavior depending on the distribution of student loan exposure within their collateral. 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