Conference Proceedings

Better Assumptions, Stronger Conclusions: The Case for Ordinal Regression in HCI

Brandon Victor Syiem, Eduardo Velloso

Proceedings of the 2026 CHI Conference on Human Factors in Computing Systems | ACM | Published : 2026

Open access

Abstract

Despite the widespread use of ordinal measures in HCI, such as Likert-items, there is little consensus among HCI researchers on the statistical methods used for analysing such data. Both parametric and non-parametric methods have been extensively used within the discipline, with limited reflection on their assumptions and appropriateness for such analyses. In this paper, we examine recent HCI works that report statistical analyses of ordinal measures. We highlight prevalent methods used, discuss their limitations and spotlight key assumptions and oversights that diminish the insights drawn from these methods. Finally, we champion and detail the use of cumulative link (mixed) models (CLM/CLMM..

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University of Melbourne Researchers