Beyond P-Values: Bayesian Approaches for User Experience Research
- Authors
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Iman Tahamtan, PhD
University of Tennessee, KnoxvilleAuthor
- Abstract
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Null hypothesis significance testing (NHST), using p-values and confidence intervals, has long been the standard in user research, particularly in large-sample settings like A/B testing. However, user experience studies often rely on smaller samples, rapid iterations, and design-driven outcomes, in which p-values can be difficult to interpret, and confidence intervals may offer limited practical guidance. This paper introduces Bayesian statistics as a complementary framework better suited to these conditions. Unlike the frequentist view, which treats parameters (such as satisfaction score) as fixed but unknown quantities—meaning there is one true value in the population that doesn’t change—Bayesian methods treat parameters as uncertain and represent them through probability distributions, indicating which values are plausible given the data and any prior knowledge. Bayesian methods enable direct probability statements about parameters, integration of prior knowledge, and more interpretable results that align with iterative UX practices. In this paper, we introduce key Bayesian tools, such as Bayes factors and credible intervals, as more informative alternatives to p-values and confidence intervals that make it easier to compare different models and express uncertainty in a way that is more useful for iterative design decisions. Advantages include robustness with small samples (when using appropriately informative priors), flexibility in handling hierarchical models (for example, data in which tasks are nested within users or users are nested within groups), handling missing data (by estimating values from the posterior under assumed missingness), and decision-readiness in design contexts. By reframing statistical inference around probability, evidence, and prior knowledge, Bayesian methods provide UX researchers a more transparent and practical toolkit for guiding design decisions.
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- Vol. 21 No. 1 (2025)
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- Articles

