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 426450 of 982 papers

TitleStatusHype
Semi-Supervised Graph Representation Learning with Human-centric Explanation for Predicting Fatty Liver Disease0
Multi-hop Attention-based Graph Pooling: A Personalized PageRank PerspectiveCode0
A Survey on Temporal Knowledge Graph: Representation Learning and Applications0
Negative Sampling in Knowledge Graph Representation Learning: A Review0
Hierarchical Multi-Relational Graph Representation Learning for Large-Scale Prediction of Drug-Drug InteractionsCode0
Representation learning in multiplex graphs: Where and how to fuse information?Code0
LocalGCL: Local-aware Contrastive Learning for Graphs0
Hyperdimensional Representation Learning for Node Classification and Link Prediction0
Understanding Survey Paper Taxonomy about Large Language Models via Graph Representation Learning0
Adversarial Curriculum Graph Contrastive Learning with Pair-wise Augmentation0
Position: Topological Deep Learning is the New Frontier for Relational Learning0
Graph Mamba: Towards Learning on Graphs with State Space ModelsCode0
ExGRG: Explicitly-Generated Relation Graph for Self-Supervised Representation Learning0
Two Trades is not Baffled: Condensing Graph via Crafting Rational Gradient MatchingCode0
On provable privacy vulnerabilities of graph representations0
EXGC: Bridging Efficiency and Explainability in Graph CondensationCode0
Advancing Graph Representation Learning with Large Language Models: A Comprehensive Survey of Techniques0
Scalable and Efficient Temporal Graph Representation Learning via Forward Recent SamplingCode0
L2G2G: a Scalable Local-to-Global Network Embedding with Graph AutoencodersCode0
Graph Transformers without Positional Encodings0
GPS: Graph Contrastive Learning via Multi-scale Augmented Views from Adversarial Pooling0
Product Manifold Representations for Learning on Biological PathwaysCode0
EMP: Effective Multidimensional Persistence for Graph Representation Learning0
Gradient Flow of Energy: A General and Efficient Approach for Entity Alignment DecodingCode0
Graph Representation Learning for Contention and Interference Management in Wireless NetworksCode0
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Benchmark Results

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