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 15511570 of 1570 papers

TitleStatusHype
TrafficKAN-GCN: Graph Convolutional-based Kolmogorov-Arnold Network for Traffic Flow OptimizationCode0
Trajectory Encoding Temporal Graph NetworksCode0
TrustGLM: Evaluating the Robustness of GraphLLMs Against Prompt, Text, and Structure AttacksCode0
TSPP: A Unified Benchmarking Tool for Time-series ForecastingCode0
Instrument variable detection with graph learning : an application to high dimensional GIS-census data for house pricingCode0
Unifying Knowledge Graph Learning and Recommendation: Towards a Better Understanding of User PreferencesCode0
UniKG: A Benchmark and Universal Embedding for Large-Scale Knowledge GraphsCode0
Universally Expressive Communication in Multi-Agent Reinforcement LearningCode0
Unseen Anomaly Detection on Networks via Multi-Hypersphere LearningCode0
Unsupervised feature selection method based on iterative similarity graph factorization and clustering by modularityCode0
Unsupervised Graph Anomaly Detection via Multi-Hypersphere Heterophilic Graph LearningCode0
Unsupervised Multiplex Graph Learning with Complementary and Consistent InformationCode0
Virtual Nodes Can Help: Tackling Distribution Shifts in Federated Graph LearningCode0
Wasserstein multivariate auto-regressive models for modeling distributional time seriesCode0
Wavelet-Inspired Multiscale Graph Convolutional Recurrent Network for Traffic ForecastingCode0
Weisfeiler and Leman Go Walking: Random Walk Kernels RevisitedCode0
When Witnesses Defend: A Witness Graph Topological Layer for Adversarial Graph LearningCode0
XGBD: Explanation-Guided Graph Backdoor DetectionCode0
You Can't Ignore Either: Unifying Structure and Feature Denoising for Robust Graph LearningCode0
Learning Universal Graph Neural Network Embeddings With Aid Of Transfer LearningCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1HaloGraphNetR^20.97Unverified