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When approximate number acuity predicts math performance: The moderating role of math anxiety

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  • Emily J Braham
  • Melissa E Libertus

Abstract

Separate lines of research suggest that people who are better at estimating numerical quantities using the approximate number system (ANS) have better math performance, and that people with high levels of math anxiety have worse math performance. Only a handful of studies have examined both ANS acuity and math anxiety in the same participants and those studies report contradictory results. To address these inconsistencies, in the current study 87 undergraduate students completed assessments of ANS acuity, math anxiety, and three different measures of math. We considered moderation models to examine the interplay of ANS acuity and math anxiety on different aspects of math performance. Math anxiety and ANS acuity were both unique significant predictors of the ability to automatically recall basic number facts. ANS acuity was also a unique significant predictor of the ability to solve applied math problems, and this relation was further qualified by a significant interaction with math anxiety: the positive association between ANS acuity and applied problem solving was only present in students with high math anxiety. Our findings suggest that ANS acuity and math anxiety are differentially related to various aspects of math and should be considered together when examining their respective influences on math ability. Our findings also raise the possibility that good ANS acuity serves as a protective factor for highly math-anxious students on certain types of math assessments.

Suggested Citation

  • Emily J Braham & Melissa E Libertus, 2018. "When approximate number acuity predicts math performance: The moderating role of math anxiety," PLOS ONE, Public Library of Science, vol. 13(5), pages 1-14, May.
  • Handle: RePEc:plo:pone00:0195696
    DOI: 10.1371/journal.pone.0195696
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