Who is Not Passing Statistics? Trends in an Undergraduate Statistics Course

Authors

  • PJ Verrecchia Author

Keywords:

Pedagogy, Regression Analysis, Statistics

Abstract

 

A behavioral science statistics course is required for a number of majors at the author’s institution. Due to the challenging nature of the course, almost every semester there are students who do not earn a passing grade, which means that they must either retake it or find a new major that does not require it. The study found that students with lower SAT scores, lower class participation grades, and who are non-white did not pass statistics. The findings should aid colleges and universities in identifying and assisting students who are at risk of failure.

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References

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Published

2025-12-09

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How to Cite

Who is Not Passing Statistics? Trends in an Undergraduate Statistics Course. (2025). Journal on Excellence in College Teaching. https://celt.miamioh.edu/index.php/JECT/article/view/1241