SOTAVerified

Link Prediction

Link Prediction is a task in graph and network analysis where the goal is to predict missing or future connections between nodes in a network. Given a partially observed network, the goal of link prediction is to infer which links are most likely to be added or missing based on the observed connections and the structure of the network.

( Image credit: Inductive Representation Learning on Large Graphs )

Papers

Showing 11511175 of 1949 papers

TitleStatusHype
Higher-Order Relations Skew Link Prediction in Graphs0
The CAT SET on the MAT: Cross Attention for Set Matching in Bipartite HypergraphsCode0
Node Feature Extraction by Self-Supervised Multi-scale Neighborhood PredictionCode0
Barlow Graph Auto-Encoder for Unsupervised Network Embedding0
Deeper-GXX: Deepening Arbitrary GNNs0
TME-BNA: Temporal Motif-Preserving Network Embedding with Bicomponent Neighbor AggregationCode0
Degree-Based Random Walk Approach for Graph Embedding0
Drug Re-positioning via Text Augmented Knowledge Graph Embeddings0
Why Settle for Just One? Extending EL++ Ontology Embeddings with Many-to-Many Relationships0
Graph Partner Neural Networks for Semi-Supervised Learning on Graphs0
Understanding the network formation pattern for better link predictionCode0
POLE: Polarized Embedding for Signed NetworksCode0
Prix-LM: Pretraining for Multilingual Knowledge Base ConstructionCode0
Network Representation Learning: From Preprocessing, Feature Extraction to Node Embedding0
Residual2Vec: Debiasing graph embedding with random graphsCode0
Dyn-Backdoor: Backdoor Attack on Dynamic Link Prediction0
Simplicial Convolutional Neural Networks0
Inductive Representation Learning in Temporal Networks via Mining Neighborhood and Community InfluencesCode0
Latent Network Embedding via Adversarial Auto-encoders0
How Neural Processes Improve Graph Link PredictionCode0
Revisiting Virtual Nodes in Graph Neural Networks for Link Prediction0
Explaining Knowledge Graph Embedding via Latent Rule Learning0
Explainable Automatic Hypothesis Generation via High-order Graph Walks0
Online graph nets0
A Deep Latent Space Model for Directed Graph Representation Learning0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1AutoKGEHits@100.56Unverified
2CP-N3-RPHits@100.55Unverified
3DistMult (after variational EM)Hits@100.55Unverified
4KG-R3Hits@100.54Unverified
5LASSHits@100.53Unverified
6MDE_advHits@100.53Unverified
7GFA-NNHits@100.52Unverified
8KGRefinerHits@100.49Unverified
9ComplEx NSCachingHits@100.48Unverified
10LogicENNHits@100.47Unverified
#ModelMetricClaimedVerifiedStatus
1MoCoKGCHits@100.88Unverified
2KERMITHits@100.83Unverified
3MoCoSAHits@100.82Unverified
4SimKGCIB(+PB+SN)Hits@100.82Unverified
5C-LMKE(bert-base)Hits@100.79Unverified
6LASSHits@100.79Unverified
7LP-BERTHits@100.75Unverified
8KGLMHits@100.74Unverified
9StAR(Self-Adp)Hits@100.71Unverified
10PALTHits@100.69Unverified
#ModelMetricClaimedVerifiedStatus
1OpenKE (han2018openke)training time (s)11Unverified
2LibKGE (ruffinelli2020you)training time (s)10Unverified
3GraphVite (zhu2019graphvite)training time (s)6Unverified
4Inverse ModelHits@100.96Unverified
5QuatDEHits@100.96Unverified
6LineaREHits@100.96Unverified
7AutoKGEHits@100.96Unverified
8MEI (small)Hits@100.96Unverified
9ComplEx-N3 (reciprocal)Hits@100.96Unverified
10RotatEHits@100.96Unverified
#ModelMetricClaimedVerifiedStatus
1OPTransEHits@100.9Unverified
2AutoKGEMRR0.86Unverified
3ComplEx-N3 (reciprocal)MRR0.86Unverified
4LineaREMRR0.84Unverified
5DistMult (after variational EM)MRR0.84Unverified
6QuatEMRR0.83Unverified
7SEEKMRR0.83Unverified
8MEI-BTDMRR0.81Unverified
9MEI (small)MRR0.8Unverified
10pRotatEMRR0.8Unverified