PuSH - Publication Server of Helmholtz Zentrum München

Coupette, C.* ; Vreeken, J.* ; Rieck, B.

All the world's a (hyper)graph: A data drama.

Digit. Scholarsh. Humanit. 39, 74-96 (2024)
Publ. Version/Full Text DOI
Open Access Hybrid
Creative Commons Lizenzvertrag
We introduce HYPERBARD, a dataset of diverse relational data representations derived from Shakespeare's plays. Our representations range from simple graphs capturing character co-occurrence in single scenes to hypergraphs encoding complex communication settings and character contributions as hyperedges with edge-specific node weights. By making multiple intuitive representations readily available for experimentation, we facilitate rigorous representation robustness checks in graph learning, graph mining, and network analysis, highlighting the advantages and drawbacks of specific representations. Leveraging the data released in HYPERBARD, we demonstrate that many solutions to popular graph mining problems are highly dependent on the representation choice, thus calling current graph curation practices into question. As an homage to our data source, and asserting that science can also be art, we present our points in the form of a play.
Impact Factor
Scopus SNIP
Altmetric
0.700
1.280
Tags
Annotations
Special Publikation
Hide on homepage

Edit extra information
Edit own tags
Private
Edit own annotation
Private
Hide on publication lists
on hompage
Mark as special
publikation
Publication type Article: Journal article
Document type Scientific Article
Language english
Publication Year 2024
HGF-reported in Year 2024
ISSN (print) / ISBN 2055-7671
e-ISSN 2055-768X
Quellenangaben Volume: 39, Issue: 1, Pages: 74-96 Article Number: , Supplement: ,
Publisher Oxford University Press
Reviewing status Peer reviewed
Institute(s) Institute of AI for Health (AIH)
POF-Topic(s) 30205 - Bioengineering and Digital Health
Research field(s) Enabling and Novel Technologies
PSP Element(s) G-540003-001
Scopus ID 85189291902
Erfassungsdatum 2024-04-25