B2F: No grades, No problem: Ungrading in undergraduate and graduate statistics courses


Wendy Moore (Cal State East Bay)


Location: Gerdin 2127

Abstract

As educators, one of our most critical roles in the learning process is providing meaningful feedback to students. Research has consistently shown that traditional point-based grading systems can negatively impact learning by reducing motivation, increasing anxiety, and hindering material comprehension. Over the past two years, we have explored an alternative approach: ungrading. This grading paradigm has been implemented in both introductory and master’s-level statistics courses to address the challenges associated with numeric scoring. After two semesters of experimentation, we conducted a pseudo-experiment in our introductory statistics courses, randomly assigning two sections to different grading schemes. In Fall 2024, we expanded our exploration of ungrading to two sections of a graduate-level Statistical Methods course—one delivered in person and the other online. In this session, we will share a comparative analysis of ungrading across undergraduate and graduate statistics courses, offer practical recommendations for its implementation, and discuss strategies for scaling ungrading to larger classes.


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