Inferential Tasks as an Evaluation Technique for Visualization
Abstract
Designing suitable tasks for visualization evaluation remains challenging. Traditional evaluation techniques commonly rely on 'low-level' or 'open-ended' tasks to assess the efficacy of a proposed visualization, however, nontrivial trade-offs exist between the two. Low-level tasks allow for robust quantitative evaluations, but are not indicative of the complex usage of a visualization. Open-ended tasks, while excellent for insight-based evaluations, are typically unstructured and require time-consuming interviews. Bridging this gap, we propose inferential tasks: a complementary task category based on inferential learning in psychology. Inferential tasks produce quantitative evaluation data in which users are prompted to form and validate their own findings with a visualization. We demonstrate the use of inferential tasks through a validation experiment on two well-known visualization tools.
Cite
@article{arxiv.2205.05712,
title = {Inferential Tasks as an Evaluation Technique for Visualization},
author = {Ashley Suh and Ab Mosca and Shannon Robinson and Quinn Pham and Dylan Cashman and Alvitta Ottley and Remco Chang},
journal= {arXiv preprint arXiv:2205.05712},
year = {2022}
}
Comments
EuroVis Short Paper 2022