SOTAVerified

Knowledge Graph Completion

Knowledge graphs $G$ are represented as a collection of triples $\{(h, r, t)\}\subseteq E\times R\times E$, where $E$ and $R$ are the entity set and relation set. The task of Knowledge Graph Completion is to either predict unseen relations $r$ between two existing entities: $(h, ?, t)$ or predict the tail entity $t$ given the head entity and the query relation: $(h, r, ?)$.

Source: One-Shot Relational Learning for Knowledge Graphs

Papers

Showing 201225 of 482 papers

TitleStatusHype
Inductively Representing Out-of-Knowledge-Graph Entities by Optimal Estimation Under Translational AssumptionsCode0
Complex Logical Query Answering by Calibrating Knowledge Graph Completion ModelsCode0
Model-based Subsampling for Knowledge Graph CompletionCode0
Few-shot link prediction via graph neural networks for Covid-19 drug-repurposingCode0
Commonsense Knowledge Graph Completion Via Contrastive Pretraining and Node ClusteringCode0
Integrating Lexical Information into Entity Neighbourhood Representations for Relation PredictionCode0
Few-Shot Knowledge Graph CompletionCode0
ComDensE : Combined Dense Embedding of Relation-aware and Common Features for Knowledge Graph CompletionCode0
MACO: A Modality Adversarial and Contrastive Framework for Modality-missing Multi-modal Knowledge Graph CompletionCode0
A shallow neural model for relation predictionCode0
Multi-task Pre-training Language Model for Semantic Network CompletionCode0
Logic and Commonsense-Guided Temporal Knowledge Graph CompletionCode0
Iterative Entity Alignment via Joint Knowledge EmbeddingsCode0
Iteratively Learning Representations for Unseen Entities with Inter-Rule CorrelationsCode0
Leveraging Pre-trained Language Models for Time Interval Prediction in Text-Enhanced Temporal Knowledge GraphsCode0
Logic Attention Based Neighborhood Aggregation for Inductive Knowledge Graph EmbeddingCode0
Extending Transductive Knowledge Graph Embedding Models for Inductive Logical Relational InferenceCode0
Learning to Borrow -- Relation Representation for Without-Mention Entity-Pairs for Knowledge Graph CompletionCode0
Learning to Borrow– Relation Representation for Without-Mention Entity-Pairs for Knowledge Graph CompletionCode0
Learning Hierarchy-Aware Quaternion Knowledge Graph Embeddings with Representing Relations as 3D RotationsCode0
KEPLER: A Unified Model for Knowledge Embedding and Pre-trained Language RepresentationCode0
Learning Granularity Representation for Temporal Knowledge Graph CompletionCode0
Knowledge Hypergraphs: Prediction Beyond Binary RelationsCode0
Learning Sequence Encoders for Temporal Knowledge Graph CompletionCode0
Challenging the Assumption of Structure-based embeddings in Few- and Zero-shot Knowledge Graph CompletionCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1KBGATHits@1062.6Unverified
2HAKEHits@1054.2Unverified
3PKGCHits@1048.7Unverified
4KBATHits@146Unverified
#ModelMetricClaimedVerifiedStatus
1JMACMRR44.6Unverified
2AlignKGCMRR41.3Unverified
3SS-AGAMRR32.1Unverified
#ModelMetricClaimedVerifiedStatus
1JMACMRR71.7Unverified
2AlignKGCMRR69.4Unverified
3SS-AGAMRR35.3Unverified
#ModelMetricClaimedVerifiedStatus
1JMACMRR64.5Unverified
2AlignKGCMRR59.5Unverified
3SS-AGAMRR36.6Unverified
#ModelMetricClaimedVerifiedStatus
1HAKEHits@30.52Unverified
2KBGATHits@30.48Unverified
#ModelMetricClaimedVerifiedStatus
1KTUP (soft)Hits@1060.75Unverified
#ModelMetricClaimedVerifiedStatus
1KTUP (soft)Hits@1048.9Unverified