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 2650 of 1570 papers

TitleStatusHype
Decoupled Dynamic Spatial-Temporal Graph Neural Network for Traffic ForecastingCode2
Towards Relation-centered Pooling and Convolution for Heterogeneous Graph Learning NetworksCode2
Triplet Interaction Improves Graph Transformers: Accurate Molecular Graph Learning with Triplet Graph TransformersCode2
Can Graph Learning Improve Planning in LLM-based Agents?Code2
CogDL: A Comprehensive Library for Graph Deep LearningCode2
Dynamic GNNs for Precise Seizure Detection and Classification from EEG DataCode2
Graph Foundation Models: A Comprehensive SurveyCode2
Combinatorial Optimization with Automated Graph Neural NetworksCode2
Continual Learning on Graphs: Challenges, Solutions, and OpportunitiesCode2
FedGraph: A Research Library and Benchmark for Federated Graph LearningCode2
GDGB: A Benchmark for Generative Dynamic Text-Attributed Graph LearningCode2
Acceleration Algorithms in GNNs: A SurveyCode2
A Survey of Deep Graph Learning under Distribution Shifts: from Graph Out-of-Distribution Generalization to AdaptationCode2
RGL: A Graph-Centric, Modular Framework for Efficient Retrieval-Augmented Generation on GraphsCode2
GraphGPT: Graph Instruction Tuning for Large Language ModelsCode2
Graph-ToolFormer: To Empower LLMs with Graph Reasoning Ability via Prompt Dataset Augmented by ChatGPTCode2
Graph-ToolFormer: To Empower LLMs with Graph Reasoning Ability via Prompt Augmented by ChatGPTCode2
Interpretable and Generalizable Graph Learning via Stochastic Attention MechanismCode2
Learning Causally Invariant Representations for Out-of-Distribution Generalization on GraphsCode2
Beyond Redundancy: Information-aware Unsupervised Multiplex Graph Structure LearningCode1
A Practical, Progressively-Expressive GNNCode1
Beyond Weisfeiler-Lehman: A Quantitative Framework for GNN ExpressivenessCode1
Appearance and Structure Aware Robust Deep Visual Graph Matching: Attack, Defense and BeyondCode1
State of the Art and Potentialities of Graph-level LearningCode1
Approximate Network Motif Mining Via Graph LearningCode1
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1HaloGraphNetR^20.97Unverified