Mapping Complex Technologies via Science-Technology Linkages; The Case of Neuroscience -- A transformer based keyword extraction approach
Daniel Hain, Roman Jurowetzki, Mariagrazia Squicciarini

TL;DR
This paper introduces a transformer-based deep learning method for extracting scientific keywords and mapping scientific literature to patents, enhancing technology mapping and forecasting in neuroscience.
Contribution
It presents a novel approach combining transformer models and NER for automatic keyword extraction and patent mapping in scientific texts, advancing science-technology linkage analysis.
Findings
Effective extraction of coherent scientific topics and keywords.
Successful mapping of neuroscience publications to related patents.
Demonstrated potential for technology forecasting and analysis.
Abstract
In this paper, we present an efficient deep learning based approach to extract technology-related topics and keywords within scientific literature, and identify corresponding technologies within patent applications. Specifically, we utilize transformer based language models, tailored for use with scientific text, to detect coherent topics over time and describe these by relevant keywords that are automatically extracted from a large text corpus. We identify these keywords using Named Entity Recognition, distinguishing between those describing methods, applications and other scientific terminology. We create a large amount of search queries based on combinations of method- and application-keywords, which we use to conduct semantic search and identify related patents. By doing so, we aim at contributing to the growing body of research on text-based technology mapping and forecasting that…
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Taxonomy
TopicsAdvanced Text Analysis Techniques · scientometrics and bibliometrics research
