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Working Paper
Race to the Bottom: Competition and Quality in Science
Author(s)
This paper investigates how competition to publish first and thereby establish priority impacts the quality of scientific research. We begin by developing a model where scientists decide
whether and how long to work on a given project. When deciding how long to let their projects
mature, scientists trade off the marginal benefit of higher quality research against the marginal
risk of being pre-empted. The most important (highest potential) projects are the most competitive because they induce the most entry. Therefore, the model predicts these projects are
also the most rushed and lowest quality. We test the predictions of this model in the field of
structural biology using data from the Protein Data Bank (PDB), a repository for structures of
large macromolecules. An important feature of the PDB is that it assigns objective measures
of scientific quality to each structure. As suggested by the model, we find that structures with
higher ex-ante potential generate more competition, are completed faster, and are lower quality. Consistent with the model, and with a causal interpretation of our empirical results, these
relationships are mitigated when we focus on structures deposited by scientists who – by nature
of their employment position – are less focused on publication and priority.
Date Published:
2022
Citations:
Hill, Ryan, Carolyn Stein. 2022. Race to the Bottom: Competition and Quality in Science.