Paper-Patent Citation Linkages as Early Signs for Predicting Delayed Recognized Knowledge: Macro and Micro Evidence
Jian Du, Peixin Li, Robin Haunschild, Yinan Sun, and Xiaoli Tang

TL;DR
This paper explores how patent citations can serve as early indicators for delayed recognition of scientific knowledge, revealing patterns of impact and recognition timing across various scientific fields.
Contribution
It introduces a novel approach using patent citations to predict delayed recognition in science, supported by macro and micro evidence across multiple disciplines.
Findings
Delayed recognition papers show longer and stronger impact.
Patent citations often precede scientific recognition in recent years.
Sleeping beauties encounter negative citations before gaining recognition.
Abstract
In this study, we investigate the extent to which patent citations to papers can serve as early signs for predicting delayed recognized knowledge in science using a comparative study with a control group, i.e., instant recognition papers. We identify the two opposite groups of papers by the Bcp measure, a parameter-free index for identifying papers which were recognized with delay. We provide a macro (Science/Nature papers dataset) and micro (a case chosen from the dataset) evidence on paper-patent citation linkages as early signs for predicting delayed recognized knowledge in science. It appears that papers with delayed recognition show a stronger and longer technical impact than instant recognition papers. We provide indication that in the more recent years papers with delayed recognition are awakened more often and earlier by a patent rather than by a scientific paper (also called…
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Taxonomy
Topicsscientometrics and bibliometrics research · Machine Learning in Materials Science · Intellectual Property and Patents
