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 401425 of 482 papers

TitleStatusHype
MoCoSA: Momentum Contrast for Knowledge Graph Completion with Structure-Augmented Pre-trained Language Models0
MuCo-KGC: Multi-Context-Aware Knowledge Graph Completion0
MulDE: Multi-teacher Knowledge Distillation for Low-dimensional Knowledge Graph Embeddings0
Multi-level Shared Knowledge Guided Learning for Knowledge Graph Completion0
Multilingual Knowledge Graph Completion with Joint Relation and Entity Alignment0
Multi-view Classification Model for Knowledge Graph Completion0
Neural, Symbolic and Neural-Symbolic Reasoning on Knowledge Graphs0
Neural Tensor Networks with Diagonal Slice Matrices0
NeuSTIP: A Novel Neuro-Symbolic Model for Link and Time Prediction in Temporal Knowledge Graphs0
NoiGAN: NOISE AWARE KNOWLEDGE GRAPH EMBEDDING WITH GAN0
One Subgraph for All: Efficient Reasoning on Opening Subgraphs for Inductive Knowledge Graph Completion0
On Event-Driven Knowledge Graph Completion in Digital Factories0
On Large-scale Evaluation of Embedding Models for Knowledge Graph Completion0
On Multi-Relational Link Prediction with Bilinear Models0
On the Aggregation of Rules for Knowledge Graph Completion0
On the Equivalence of Holographic and Complex Embeddings for Link Prediction0
Toward Understanding The Effect Of Loss function On Then Performance Of Knowledge Graph Embedding0
On the Use of Entity Embeddings from Pre-Trained Language Models for Knowledge Graph Completion0
Ontology-enhanced Prompt-tuning for Few-shot Learning0
Path-based knowledge reasoning with textual semantic information for medical knowledge graph completion0
P-INT: A Path-based Interaction Model for Few-shot Knowledge Graph Completion0
Positive-Unlabeled Learning with Adversarial Data Augmentation for Knowledge Graph Completion0
Predicting from a Different Perspective: A Re-ranking Model for Inductive Knowledge Graph Completion0
Pre-training Transformers for Knowledge Graph Completion0
Pretrain-KGEs: Learning Knowledge Representation from Pretrained Models for Knowledge Graph Embeddings0
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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