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How Expressive are Knowledge Graph Foundation Models?

About

Knowledge Graph Foundation Models (KGFMs) are at the frontier for deep learning on knowledge graphs (KGs), as they can generalize to completely novel knowledge graphs with different relational vocabularies. Despite their empirical success, our theoretical understanding of KGFMs remains very limited. In this paper, we conduct a rigorous study of the expressive power of KGFMs. Specifically, we show that the expressive power of KGFMs directly depends on the motifs that are used to learn the relation representations. We then observe that the most typical motifs used in the existing literature are binary, as the representations are learned based on how pairs of relations interact, which limits the model's expressiveness. As part of our study, we design more expressive KGFMs using richer motifs, which necessitate learning relation representations based on, e.g., how triples of relations interact with each other. Finally, we empirically validate our theoretical findings, showing that the use of richer motifs results in better performance on a wide range of datasets drawn from different domains.

Xingyue Huang, Pablo Barcel\'o, Michael M. Bronstein, \.Ismail \.Ilkan Ceylan, Mikhail Galkin, Juan L Reutter, Miguel Romero Orth• 2025

Related benchmarks

TaskDatasetResultRank
Link PredictionYAGO3-10
MRR0.603
50
Knowledge Graph ReasoningFB15k-237 (test)--
29
Hyper-Relational Link PredictionJFFI100 V1
H/T Metric33.62
22
Hyper-Relational Link PredictionJFFI100 V2
H/T Score0.2481
22
Link PredictionHetionet
MRR0.446
21
Link PredictionNELL995
MRR51.4
21
Hyper-Relational Link PredictionWD20K66 V1
MRR (H/T)0.2507
19
Hyper-Relational Link PredictionWD20K66 V2
H/T Score19.39
19
Hyper-Relational Link PredictionWD20K33 V1
H/T Score0.1108
19
Hyper-Relational Link PredictionWD20K100 V2
H/T Ratio18.43
19
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