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TRIX: A More Expressive Model for Zero-shot Domain Transfer in Knowledge Graphs

About

Fully inductive knowledge graph models can be trained on multiple domains and subsequently perform zero-shot knowledge graph completion (KGC) in new unseen domains. This is an important capability towards the goal of having foundation models for knowledge graphs. In this work, we introduce a more expressive and capable fully inductive model, dubbed TRIX, which not only yields strictly more expressive triplet embeddings (head entity, relation, tail entity) compared to state-of-the-art methods, but also introduces a new capability: directly handling both entity and relation prediction tasks in inductive settings. Empirically, we show that TRIX outperforms the state-of-the-art fully inductive models in zero-shot entity and relation predictions in new domains, and outperforms large-context LLMs in out-of-domain predictions. The source code is available at https://github.com/yuchengz99/TRIX.

Yucheng Zhang, Beatrice Bevilacqua, Mikhail Galkin, Bruno Ribeiro• 2025

Related benchmarks

TaskDatasetResultRank
Hyper-Relational Link PredictionJFFI100 V1
H/T Metric38.69
22
Hyper-Relational Link PredictionJFFI100 V2
H/T Score0.209
22
Hyper-Relational Link PredictionWD20K100 V2
H/T Ratio42.35
19
Hyper-Relational Link PredictionWD20K66 V1
MRR (H/T)0.1984
19
Hyper-Relational Link PredictionWD20K33 V1
H/T Score0.2205
19
Hyper-Relational Link PredictionWD20K66 V2
H/T Score21.54
19
Hyper-Relational Link PredictionJFFI V1
MRR (H/T)0.3122
18
Hyper-relational Inductive Link PredictionWDSPLIT100 V1
MRR (H/T)0.3579
15
Hyper-relational Inductive Link PredictionWDSPLIT100 V2
MRR (H/T)0.323
15
Hyper-relational Inductive Link PredictionWD20K33 V2
MRR (H/T)0.1758
15
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