Increasing the Transparency of Research Papers with Explorable Multiverse Analyses
ACM Human Factors in Computing Systems (CHI) 2019 Best PaperAbstract
We present explorable multiverse analysis reports, a new approach to statistical reporting where readers of research papers can explore alternative analysis options by interacting with the paper itself. This approach draws from two recent ideas: i) multiverse analysis, a philosophy of statistical reporting where paper authors report the outcomes of many different statistical analyses in order to show how fragile or robust their findings are; and ii) explorable explanations, narratives that can be read as normal explanations but where the reader can also become active by dynamically changing some elements of the explanation. Based on five examples and a design space analysis, we show how combining those two ideas can complement existing reporting approaches and constitute a step towards more transparent research papers.
Citation
BibTeX
@inproceedings{explorable-multiverse-analysis-report-chi-2019, title = {Increasing the Transparency of Research Papers with Explorable Multiverse Analyses}, author = {Dragicevic, Pierre and Jansen, Yvonne and Sarma, Abhraneel and Kay, Matthew and Chevalier, Fanny}, year = 2019, booktitle = {Proceedings of the 2019 CHI Conference on Human Factors in Computing Systems}, publisher = {ACM}, series = {CHI '19}, doi = {10.1145/3290605.3300295} }