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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 221230 of 403 papers

TitleStatusHype
Loss Landscape of Shallow ReLU-like Neural Networks: Stationary Points, Saddle Escaping, and Network Embedding0
Time-aware Gradient Attack on Dynamic Network Link Prediction0
Time to Cite: Modeling Citation Networks using the Dynamic Impact Single-Event Embedding Model0
Toward Edge-Centric Network Embeddings0
TriNE: Network Representation Learning for Tripartite Heterogeneous Networks0
Tutorial on NLP-Inspired Network Embedding0
Understanding and Improvement of Adversarial Training for Network Embedding from an Optimization Perspective0
Unifying Homophily and Heterophily Network Transformation via Motifs0
Unifying Structural Proximity and Equivalence for Enhanced Dynamic Network Embedding0
Unsupervised Attributed Dynamic Network Embedding with Stability Guarantees0
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