MetaExplorer: Facilitating Reasoning with Epistemic Uncertainty in Meta-analysis
ACM Human Factors in Computing Systems (CHI) 2023Abstract
Scientists often use meta-analysis to characterize the impact of an intervention on some outcome of interest across a body of literature. However, threats to the utility and validity of meta-analytic estimates arise when scientists average over potentially important variations in context like different research designs. Uncertainty about quality and commensurability of evidence casts doubt on results from meta-analysis, yet existing software tools for meta-analysis do not necessarily emphasize addressing these concerns in their workflows. We present MetaExplorer, a prototype system for meta-analysis that we developed using iterative design with meta-analysis experts to provide a guided process for eliciting assessments of uncertainty and reasoning about how to incorporate them during statistical inference. Our qualitative evaluation of MetaExplorer with experienced meta-analysts shows that imposing a structured workflow both elevates the perceived importance of epistemic concerns and presents opportunities for tools to engage users in dialogue around goals and standards for evidence aggregation.
Citation
BibTeX
@inproceedings{kale2023metaexplorer,
title={Metaexplorer: Facilitating reasoning with epistemic uncertainty in meta-analysis},
author={Kale, Alex and Lee, Sarah and Goan, Terrance and Tipton, Elizabeth and Hullman, Jessica},
booktitle={Proceedings of the 2023 CHI Conference on Human Factors in Computing Systems},
pages={1--14},
year={2023}
}