SOTAVerified

Graph Representation Learning

The goal of Graph Representation Learning is to construct a set of features (‘embeddings’) representing the structure of the graph and the data thereon. We can distinguish among Node-wise embeddings, representing each node of the graph, Edge-wise embeddings, representing each edge in the graph, and Graph-wise embeddings representing the graph as a whole.

Source: SIGN: Scalable Inception Graph Neural Networks

Papers

Showing 576600 of 982 papers

TitleStatusHype
Online Disease Self-diagnosis with Inductive Heterogeneous Graph Convolutional Networks0
On Node Features for Graph Neural Networks0
On provable privacy vulnerabilities of graph representations0
On the combination of graph data for assessing thin-file borrowers' creditworthiness0
On the Interpretability and Evaluation of Graph Representation Learning0
On the Use of Unrealistic Predictions in Hundreds of Papers Evaluating Graph Representations0
Optimizing Blockchain Analysis: Tackling Temporality and Scalability with an Incremental Approach with Metropolis-Hastings Random Walks0
Optimizing Supply Chain Networks with the Power of Graph Neural Networks0
Pair-view Unsupervised Graph Representation Learning0
Pairwise Half-graph Discrimination: A Simple Graph-level Self-supervised Strategy for Pre-training Graph Neural Networks0
PANE-GNN: Unifying Positive and Negative Edges in Graph Neural Networks for Recommendation0
Parameter-Efficient Tuning Large Language Models for Graph Representation Learning0
Path-LLM: A Shortest-Path-based LLM Learning for Unified Graph Representation0
Permutation Equivariant Neural Controlled Differential Equations for Dynamic Graph Representation Learning0
PersGNN: Applying Topological Data Analysis and Geometric Deep Learning to Structure-Based Protein Function Prediction0
Perturbation Ontology based Graph Attention Networks0
Piecewise-Velocity Model for Learning Continuous-time Dynamic Node Representations0
Poincaré Heterogeneous Graph Neural Networks for Sequential Recommendation0
Pointspectrum: Equivariance Meets Laplacian Filtering for Graph Representation Learning0
Polyp-artifact relationship analysis using graph inductive learned representations0
Position: Topological Deep Learning is the New Frontier for Relational Learning0
Post-Hoc Robustness Enhancement in Graph Neural Networks with Conditional Random Fields0
Tackling the Local Bias in Federated Graph Learning0
A Graph Feature Auto-Encoder for the Prediction of Unobserved Node Features on Biological Networks0
A Knowledge Graph-Enhanced Tensor Factorisation Model for Discovering Drug Targets0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Pi-net-linearError (mm)0.47Unverified