Towards the measurement of epistemic disagreement in science
Visiting speaker
Dakota Murray
Data Scientist at Digital Science
Past Talk
Hybrid talk
Wednesday
Apr 5, 2023
Watch video
2:00 pm
Virtual
177 Huntington Ave.
11th floor
Online
Register here
Healthy disagreement among scientists drives the creation of new knowledge and is a necessary precursor to consensus upon which technologies, policies, and new knowledge can be built. Yet, in spite of its prominence in popular and theoretical models of scientific progress, disagreement has received little empirical attention, with progress stymied by a lack of appropriate data and widely-accepted quantitative indicators. In this talk, we outline progress in overcoming these challenges, illustrating how increasingly-available full-text data and new approaches to measuring disagreement are paving the way for a more comprehensives, empirical, and quantitative understanding of the salience and features of disagreement in science at multiple levels of analysis. Using a rigorously-validated cue-word based approach, instances of disagreement are identified from the citation sentences of millions of publications, and incorporated into a singular indicator of disagreement. Using this indicator, we simultaneously reveal the structure of disagreement between macro-level fields and the enormous heterogeneity across meso-level subfields. At the micro-level, we complement these data with published comments—the most unambiguous instance of criticism in science—in order to better understand the sociological drivers of disagreement, including author gender, seniority, prestige, and more. This project establishes a firm methodological and empirical foundation for a science of scientific disagreement, which will prove essential for validating theories of scientific progress, building tools for scholarly search and discovery, designing consensus-aware science policy, and for effectively communicating epistemic uncertainty and consensus to the public
About the speaker
About the speaker
Dakota Murray is a computational social scientist working to understand how science works and find ways that it can be improved. His research has touched on gender bias in scientific evaluation, the international migrations of scientists, and disagreements in science. He obtained his PhD from Indiana University Bloomington, and has since worked as a postdoctoral associate at Northeastern University and a Data Scientist at Digital Science where he worked with government and funding agencies to inform science policy
Dakota Murray is a computational social scientist working to understand how science works and find ways that it can be improved. His research has touched on gender bias in scientific evaluation, the international migrations of scientists, and disagreements in science. He obtained his PhD from Indiana University Bloomington, and has since worked as a postdoctoral associate at Northeastern University and a Data Scientist at Digital Science where he worked with government and funding agencies to inform science policy