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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 291300 of 403 papers

TitleStatusHype
Network Representation of Large-Scale Heterogeneous RNA Sequences with Integration of Diverse Multi-omics, Interactions, and Annotations Data0
Embedding Biomedical Ontologies by Jointly Encoding Network Structure and Textual Node DescriptorsCode0
Dynamic Network Embedding via Incremental Skip-gram with Negative SamplingCode0
Improving Textual Network Embedding with Global Attention via Optimal Transport0
Task-Guided Pair Embedding in Heterogeneous NetworkCode0
Is a Single Vector Enough? Exploring Node Polysemy for Network EmbeddingCode0
Relation Structure-Aware Heterogeneous Information Network Embedding0
ActiveHNE: Active Heterogeneous Network Embedding0
Physiological Signal Embeddings (PHASE) via Interpretable Stacked Models0
ExplaiNE: An Approach for Explaining Network Embedding-based Link Predictions0
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