SOTAVerified

Network Embedding

Network Embedding, also known as "Network Representation Learning", is a collective term for techniques for mapping graph nodes to vectors of real numbers in a multidimensional space. To be useful, a good embedding should preserve the structure of the graph. The vectors can then be used as input to various network and graph analysis tasks, such as link prediction

Source: Tutorial on NLP-Inspired Network Embedding

Papers

Showing 341350 of 403 papers

TitleStatusHype
GANE: A Generative Adversarial Network Embedding0
Genome Sequence Classification for Animal Diagnostics with Graph Representations and Deep Neural Networks0
Learning Features of Network Structures Using Graphlets0
Grammar-Based Grounded Lexicon Learning0
Unsupervised Graph Embedding via Adaptive Graph Learning0
Graph-Level Embedding for Time-Evolving Graphs0
Harvesting Efficient On-Demand Order Pooling from Skilled Couriers: Enhancing Graph Representation Learning for Refining Real-time Many-to-One Assignments0
Heterogeneous Edge Embeddings for Friend Recommendation0
Heterogeneous Federated Learning Systems for Time-Series Power Consumption Prediction with Multi-Head Embedding Mechanism0
Heterogeneous Information Network Embedding for Meta Path based Proximity0
Show:102550
← PrevPage 35 of 41Next →

No leaderboard results yet.