Litcius/Paper detail

Argus: Interactive a priori Power Analysis

Xiaoyi Wang, Alexander Eiselmayer, Wendy E. Mackay, Kasper Hornbæk, Chat Wacharamanotham

2020IEEE Transactions on Visualization and Computer Graphics14 citationsDOIOpen Access PDF

Abstract

A key challenge HCl researchers face when designing a controlled experiment is choosing the appropriate number of participants, or sample size. A priori power analysis examines the relationships among multiple parameters, including the complexity associated with human participants, e.g., order and fatigue effects, to calculate the statistical power of a given experiment design. We created Argus, a tool that supports interactive exploration of statistical power: Researchers specify experiment design scenarios with varying confounds and effect sizes. Argus then simulates data and visualizes statistical power across these scenarios, which lets researchers interactively weigh various trade-offs and make informed decisions about sample size. We describe the design and implementation of Argus, a usage scenario designing a visualization experiment, and a think-aloud study.

Topics & Concepts

ArgusComputer scienceStatistical powerA priori and a posterioriSample size determinationVisualizationSample (material)Data scienceHuman–computer interactionStatistical analysisData visualizationKey (lock)Power analysisPower (physics)Data miningStatisticsProgramming languageChromatographyComputer securityMathematicsQuantum mechanicsChemistryCryptographyPhilosophyEpistemologyPhysicsData Visualization and AnalyticsSensory Analysis and Statistical MethodsBehavioral and Psychological Studies