Nothing Special   »   [go: up one dir, main page]

Logo des Repositoriums
 
Konferenzbeitrag

Inductive Learning of Concept Representations from Library-Scale Bibliographic Corpora

Lade...
Vorschaubild

Volltext URI

Dokumententyp

Text/Conference Paper

Zusatzinformation

Datum

2019

Zeitschriftentitel

ISSN der Zeitschrift

Bandtitel

Verlag

Gesellschaft für Informatik e.V.

Zusammenfassung

Automated research analyses are becoming more and more important as the volume of research items grows at an increasing pace. We pursue a new direction for the analysis of research dynamics with graph neural networks. So far, graph neural networks have only been applied to small-scale datasets and primarily supervised tasks such as node classification. We propose to use an unsupervised training objective for concept representation learning that is tailored towards bibliographic data with millions of research papers and thousands of concepts from a controlled vocabulary. We have evaluated the learned representations in clustering and classification downstream tasks. Furthermore, we have conducted nearest concept queries in the representation space. Our results show that the representations learned by graph convolution with our training objective are comparable to the ones learned by the DeepWalk algorithm. Our findings suggest that concept embeddings can be solely derived from the text of associated documents without using a lookup-table embedding. Thus, graph neural networks can operate on arbitrary document collections without re-training. This property makes graph neural networks useful for the analysis of research dynamics, which is often conducted on time-based snapshots of bibliographic data.

Beschreibung

Galke, Lukas; Melnychuk, Tetyana; Seidlmayer, Eva; Trog, Steffen; Förstner, Konrad U.; Schultz, Carsten; Tochtermann, Klaus (2019): Inductive Learning of Concept Representations from Library-Scale Bibliographic Corpora. INFORMATIK 2019: 50 Jahre Gesellschaft für Informatik – Informatik für Gesellschaft. DOI: 10.18420/inf2019_26. Bonn: Gesellschaft für Informatik e.V.. PISSN: 1617-5468. ISBN: 978-3-88579-688-6. pp. 219-232. Data Science. Kassel. 23.-26. September 2019

Zitierform

Tags