Alberto Cattaneo, Stephen Bonner, Thomas Martynec, Carlo Luschi, Ian P Barrett, Daniel Justus
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The Role of Graph Topology in the Performance of Biomedical Knowledge Graph Completion Models
Knowledge Graph Completion has been increasingly adopted as a useful method
for several tasks in biomedical research, like drug repurposing or drug-target
identification. To that end, a variety of datasets and Knowledge Graph
Embedding models has been proposed over the years. However, little is known
about the properties that render a dataset useful for a given task and, even
though theoretical properties of Knowledge Graph Embedding models are well
understood, their practical utility in this field remains controversial. We
conduct a comprehensive investigation into the topological properties of
publicly available biomedical Knowledge Graphs and establish links to the
accuracy observed in real-world applications. By releasing all model
predictions and a new suite of analysis tools we invite the community to build
upon our work and continue improving the understanding of these crucial
applications.