Decision-Making Under Uncertainty in Research Synthesis: Designing for the Garden of Forking Paths

01/09/2019
by   Alex Kale, et al.
0

To make evidence-based recommendations to decision-makers, researchers conducting systematic reviews and meta-analyses must navigate a garden of forking paths: a series of analytical decision-points, each of which has the potential to influence findings. To identify challenges and opportunities related to designing systems to help researchers manage uncertainty around which of multiple analyses is best, we interviewed 11 professional researchers who conduct research synthesis to inform decision-making within three organizations. We conducted a qualitative analysis identifying 480 analytical decisions made by researchers throughout the scientific process. We present descriptions of current practices in applied research synthesis and corresponding design challenges: making it more feasible for researchers to try and compare analyses, shifting researchers' attention from rationales for decisions to impacts on results, and supporting communication techniques that acknowledge decision-makers' aversions to uncertainty. We identify opportunities to design systems which help researchers explore, reason about, and communicate uncertainty in decision-making about possible analyses in research synthesis.

READ FULL TEXT
research
10/30/2019

Paths Explored, Paths Omitted, Paths Obscured: Decision Points Selective Reporting in End-to-End Data Analysis

Drawing reliable inferences from data involves many, sometimes arbitrary...
research
07/10/2020

Boba: Authoring and Visualizing Multiverse Analyses

Multiverse analysis is an approach to data analysis in which all "reason...
research
07/20/2020

Why Research on Test-Driven Development is Inconclusive?

[Background] Recent investigations into the effects of Test-Driven Devel...
research
10/26/2020

Advancing statistical decision-making in sports science

The magnitude-based decisions (MBD) procedure was developed within sport...
research
01/23/2021

Scaling Scientometrics: Dimensions on Google BigQuery as an infrastructure for large-scale analysis

Cloud computing has the capacity to transform many parts of the research...
research
03/14/2019

Designing for Reproducibility: A Qualitative Study of Challenges and Opportunities in High Energy Physics

Reproducibility should be a cornerstone of scientific research and is a ...
research
04/24/2020

Delightful Companions: Supporting Well-Being Through Design Delight

This paper presents three design products referred to as delightful comp...

Please sign up or login with your details

Forgot password? Click here to reset