SOTAVerified

Graph Learning

Graph learning is a branch of machine learning that focuses on the analysis and interpretation of data represented in graph form. In this context, a graph is a collection of nodes (or vertices) and edges, where nodes represent entities and edges represent the relationships or interactions between these entities. This structure is particularly useful for modeling complex networks found in various domains such as social networks, biological networks, and communication networks.

Graph learning leverages the relationships and structures within the graph to learn and make predictions. It includes techniques like graph neural networks (GNNs), which extend the concept of neural networks to handle graph-structured data. These models are adept at capturing the dependencies and influence of connected nodes, leading to more accurate predictions in scenarios where relationships play a key role.

Key applications of graph learning include recommender systems, drug discovery, social network analysis, and fraud detection. By utilizing the inherent structure of graph data, graph learning algorithms can uncover deep insights and patterns that are not apparent with traditional machine learning approaches.

Papers

Showing 426450 of 1570 papers

TitleStatusHype
Implicit Session Contexts for Next-Item RecommendationsCode0
E-CGL: An Efficient Continual Graph LearnerCode0
Imbalanced Graph Classification with Multi-scale Oversampling Graph Neural NetworksCode0
DyTSCL: Dynamic graph representation via tempo-structural contrastive learningCode0
DynGL-SDP: Dynamic Graph Learning for Semantic Dependency ParsingCode0
CellCLAT: Preserving Topology and Trimming Redundancy in Self-Supervised Cellular Contrastive LearningCode0
Certified Defense on the Fairness of Graph Neural NetworksCode0
Polynomial Selection in Spectral Graph Neural Networks: An Error-Sum of Function Slices ApproachCode0
CGC: Contrastive Graph Clustering for Community Detection and TrackingCode0
Implicit Graph Neural Diffusion Networks: Convergence, Generalization, and Over-SmoothingCode0
Improving Heterogeneous Graph Learning with Weighted Mixed-Curvature Product ManifoldCode0
HyperBrain: Anomaly Detection for Temporal Hypergraph Brain NetworksCode0
Dynamic Graph Representation with Contrastive Learning for Financial Market Prediction: Integrating Temporal Evolution and Static RelationsCode0
CAFIN: Centrality Aware Fairness inducing IN-processing for Unsupervised Representation Learning on GraphsCode0
Enhanced graph-learning schemes driven by similar distributions of motifsCode0
Hybrid Micro/Macro Level Convolution for Heterogeneous Graph LearningCode0
Incomplete Graph Learning: A Comprehensive SurveyCode0
HoloNets: Spectral Convolutions do extend to Directed GraphsCode0
Homomorphism Counts as Structural Encodings for Graph LearningCode0
BScNets: Block Simplicial Complex Neural NetworksCode0
Invariant Graph Learning Meets Information Bottleneck for Out-of-Distribution GeneralizationCode0
Higher-Order Graph DatabasesCode0
Dynamic Frequency Domain Graph Convolutional Network for Traffic ForecastingCode0
Highly Confident Local Structure Based Consensus Graph Learning for Incomplete Multi-View ClusteringCode0
How to learn a graph from smooth signalsCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1HaloGraphNetR^20.97Unverified