SciBERT-based Semantification of Bioassays in the Open Research Knowledge Graph

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Date
2020
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Publisher
Aachen : RWTH
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Abstract

As a novel contribution to the problem of semantifying bio- logical assays, in this paper, we propose a neural-network-based approach to automatically semantify, thereby structure, unstructured bioassay text descriptions. Experimental evaluations, to this end, show promise as the neural-based semantification significantly outperforms a naive frequencybased baseline approach. Specifically, the neural method attains 72% F1 versus 47% F1 from the frequency-based method. The work in this paper aligns with the present cutting-edge trend of the scholarly knowledge digitalization impetus which aim to convert the long-standing document-based format of scholarly content into knowledge graphs (KG). To this end, our selected data domain of bioassays are a prime candidate for structuring into KGs.

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Keywords
Open Science Graphs, Bioassays, Machine Learning
Citation
Anteghini, M., D’Souza, J., Martins dos Santos, V. A. P., & Auer, S. (2020). SciBERT-based Semantification of Bioassays in the Open Research Knowledge Graph. Aachen : RWTH.
License
CC BY 4.0 Unported