Tracing the Flow of Knowledge From Science to Technology Using Deep Learning
Michael E. Rose
Mainak Ghosh
Sebastian Erhardt
Cheng Li
Erik Buunk
Dietmar Harhoff
Main:6 Pages
7 Figures
6 Tables
Appendix:17 Pages
Abstract
We develop a language similarity model suitable for working with patents and scientific publications at the same time. In a horse race-style evaluation, we subject eight language (similarity) models to predict credible Patent-Paper Citations. We find that our Pat-SPECTER model performs best, which is the SPECTER2 model fine-tuned on patents. In two real-world scenarios (separating patent-paper-pairs and predicting patent-paper-pairs) we demonstrate the capabilities of the Pat-SPECTER. We finally test the hypothesis that US patents cite papers that are semantically less similar than in other large jurisdictions, which we posit is because of the duty of candor. The model is open for the academic community and practitioners alike.
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