Scientific Disagreements and the Diagnosticity of Evidence: How Too Much Data May Lead to Polarization

Abstract

Scientific disagreements sometimes persist even if scientists fully share results of their research. In this paper we develop an agent-based model to study the impact of diverging diagnostic values scientists may assign to the evidence, given their different background assumptions, on the emergence of polarization in the scientific community. Our results suggest that an initial disagreement on the diagnostic value of evidence can, but does not necessarily, lead to polarization, depending on the sample size of the performed studies and the confidence interval within which scientists share their opinions. In particular, the more data scientists share, the more likely it is that the community will end up polarized.

Publication
Journal of Artificial Societies and Social Simulation 26 (4)