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 11511200 of 1949 papers

TitleStatusHype
Scaling up Dynamic Edge Partition Models via Stochastic Gradient MCMC0
Schema-Guided Event Graph Completion0
Scientific Discovery as Link Prediction in Influence and Citation Graphs0
Scientific Paper Extractive Summarization Enhanced by Citation Graphs0
Seastar: vertex-centric programming for graph neural networks0
Select and Augment: Enhanced Dense Retrieval Knowledge Graph Augmentation0
Self-Explainable Graph Neural Networks for Link Prediction0
Self-Supervised Dynamic Graph Representation Learning via Temporal Subgraph Contrast0
Self-Supervised Graph Representation Learning via Global Context Prediction0
A Relation-Interactive Approach for Message Passing in Hyper-relational Knowledge Graphs0
Self-supervised Learning for Heterogeneous Graph via Structure Information based on Metapath0
Self-Supervised Pretraining for Heterogeneous Hypergraph Neural Networks0
Self-supervised Quantized Representation for Seamlessly Integrating Knowledge Graphs with Large Language Models0
Semantically Smooth Knowledge Graph Embedding0
Semantic Entity Enrichment by Leveraging Multilingual Descriptions for Link Prediction0
Semi-supervised Graph Embedding Approach to Dynamic Link Prediction0
Semi-supervised Network Embedding with Differentiable Deep Quantisation0
Semi-supervised Training for Knowledge Base Graph Self-attention Networks on Link Prediction0
SENSE: Semantically Enhanced Node Sequence Embedding0
Sequence-to-Sequence Knowledge Graph Completion and Question Answering0
SF-GNN: Self Filter for Message Lossless Propagation in Deep Graph Neural Network0
Shedding Light on Problems with Hyperbolic Graph Learning0
Dot Product is All You Need: Bridging the Gap Between Item Recommendation and Link Prediction0
SigGAN : Adversarial Model for Learning Signed Relationships in Networks0
Signed Graph Autoencoder for Explainable and Polarization-Aware Network Embeddings0
Signed Link Prediction with Sparse Data: The Role of Personality Information0
Similarity Component Analysis0
Do We Really Need Complicated Model Architectures For Temporal Networks?0
A Review of Link Prediction Applications in Network Biology0
Simplicial Convolutional Neural Networks0
Skill Discovery for Software Scripting Automation via Offline Simulations with LLMs0
Smoothing Graphons for Modelling Exchangeable Relational Data0
Drop Edges and Adapt: a Fairness Enforcing Fine-tuning for Graph Neural Networks0
Dropout Training of Matrix Factorization and Autoencoder for Link Prediction in Sparse Graphs0
Social Link Inference via Multi-View Matching Network from Spatio-Temporal Trajectories0
Social Science Guided Feature Engineering: A Novel Approach to Signed Link Analysis0
Soft Marginal TransE for Scholarly Knowledge Graph Completion0
Software Engineering Event Modeling using Relative Time in Temporal Knowledge Graphs0
SoMeR: Multi-View User Representation Learning for Social Media0
SpaceE: Knowledge Graph Embedding by Relational Linear Transformation in the Entity Space0
SPAN: Subgraph Prediction Attention Network for Dynamic Graphs0
Drug Re-positioning via Text Augmented Knowledge Graph Embeddings0
Sparse Spectral Training and Inference on Euclidean and Hyperbolic Neural Networks0
DSSLP: A Distributed Framework for Semi-supervised Link Prediction0
Spectral Evolution with Approximated Eigenvalue Trajectories for Link Prediction0
Spectral Network Embedding: A Fast and Scalable Method via Sparsity0
Spectro-Riemannian Graph Neural Networks0
SPGP: Structure Prototype Guided Graph Pooling0
Spiking Variational Graph Auto-Encoders for Efficient Graph Representation Learning0
Pitfalls in Link Prediction with Graph Neural Networks: Understanding the Impact of Target-link Inclusion & Better Practices0
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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
8ComplEx-N3 (reciprocal)Hits@100.96Unverified
9MEI (small)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