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 201210 of 403 papers

TitleStatusHype
Learning to Embed Categorical Features without Embedding Tables for Recommendation0
TriNE: Network Representation Learning for Tripartite Heterogeneous Networks0
Inductive Graph Embeddings through Locality Encodings0
EPNE: Evolutionary Pattern Preserving Network Embedding0
Explainable, Stable, and Scalable Graph Convolutional Networks for Learning Graph Representation0
Learning a Deep Part-based Representation by Preserving Data Distribution0
Layer-stacked Attention for Heterogeneous Network Embedding0
Boosting House Price Predictions using Geo-Spatial Network EmbeddingCode0
TempNodeEmb:Temporal Node Embedding considering temporal edge influence matrixCode0
Random Walks: A Review of Algorithms and Applications0
Show:102550
← PrevPage 21 of 41Next →

No leaderboard results yet.