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Quantifying the ease of scientific discovery

Samuel Arbesman ()
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Samuel Arbesman: Harvard Medical School

Scientometrics, 2011, vol. 86, issue 2, No 2, 245-250

Abstract: Abstract It has long been known that scientific output proceeds on an exponential increase, or more properly, a logistic growth curve. The interplay between effort and discovery is clear, and the nature of the functional form has been thought to be due to many changes in the scientific process over time. Here I show a quantitative method for examining the ease of scientific progress, another necessary component in understanding scientific discovery. Using examples from three different scientific disciplines—mammalian species, chemical elements, and minor planets—I find the ease of discovery to conform to an exponential decay. In addition, I show how the pace of scientific discovery can be best understood as the outcome of both scientific output and ease of discovery. A quantitative study of the ease of scientific discovery in the aggregate, such as done here, has the potential to provide a great deal of insight into both the nature of future discoveries and the technical processes behind discoveries in science.

Keywords: Discovery; Difficulty; Ease; Model; Mammals; Elements; Minor planets (search for similar items in EconPapers)
Date: 2011
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Citations: View citations in EconPapers (5)

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DOI: 10.1007/s11192-010-0232-6

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