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What’s in a Score? Differences in Consumers’ Credit Knowledge Using OLS and Quantile Regressions

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  • Angela Lyons
  • Mitchell Rachlis
  • Erik Scherpf

Abstract

Credit literacy depends, in part, on understanding credit report information and scores. The US Government Accountability Office (GAO) conducted a study in 2004 to assess consumers’ knowledge of their credit report and credit score, and the dispute resolution process. This study uses the GAO data and estimates a series of OLS and quantile regressions to identify specific subgroups of the population that could benefit from more targeted consumer policies and financial education. The findings from this research have important implications for consumer educators, financial professionals, and policymakers, especially with respect to national strategies designed to improve consumers’ financial well-being.

Suggested Citation

  • Angela Lyons & Mitchell Rachlis & Erik Scherpf, 2007. "What’s in a Score? Differences in Consumers’ Credit Knowledge Using OLS and Quantile Regressions," NFI Working Papers 2007-WP-01, Indiana State University, Scott College of Business, Networks Financial Institute.
  • Handle: RePEc:nfi:nfiwps:2007-wp-01
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    File URL: http://www.indstate.edu/business/sites/business.indstate.edu/files/Docs/2007-WP-01_Lyons-Rachlis-Scherpf.pdf
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    References listed on IDEAS

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    Cited by:

    1. Hoelzl, Erik & Kamleitner, Bernadette & Kirchler, Erich, 2011. "Loan repayment plans as sequences of instalments," Journal of Economic Psychology, Elsevier, vol. 32(4), pages 621-631, August.
    2. Suzanne Bartholomae & Mia B. Russell & Bonnie Braun & Teresa McCoy, 2016. "Building Health Insurance Literacy: Evidence from the Smart Choice Health Insurance™ Program," Journal of Family and Economic Issues, Springer, vol. 37(2), pages 140-155, June.

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