FEATHER
Graph embedding method
A reference implementation of a method for learning graph node embeddings from graph structure and node features
The reference implementation of FEATHER from the CIKM '20 paper "Characteristic Functions on Graphs: Birds of a Feather, from Statistical Descriptors to Parametric Models".
45 stars
3 watching
13 forks
Language: Python
last commit: over 1 year ago
Linked from 1 awesome list
data-miningdeep-learningdeep-neural-networksdeepwalkgraphgraph-classificationgraph-convolutiongraph-embeddinggraph-kernelgraph2vecmachine-learningnetwork-embeddingnetworkxneural-networknode-classificationnode-embeddingnode2vecpytorchrepresentation-learningtensorflow
Related projects:
Repository | Description | Stars |
---|---|---|
benedekrozemberczki/role2vec | An implementation of a deep learning-based method for creating vector representations of nodes in a graph | 166 |
benedekrozemberczki/grarep | An implementation of a method for learning graph representations from global structural information in a network | 63 |
benedekrozemberczki/attentionwalk | An implementation of a deep learning algorithm to generate node embeddings in graphs | 320 |
benedekrozemberczki/gemsec | A reference implementation of graph embedding with clustering using deep learning techniques | 252 |
benedekrozemberczki/tene | A sparsity-aware implementation of a deep learning algorithm for graph embedding with text information. | 73 |
benedekrozemberczki/bane | A software implementation of a graph embedding algorithm | 86 |
benedekrozemberczki/musae | Implementation of a method for generating node embeddings in graph data with attributed information | 159 |
benedekrozemberczki/boostedfactorization | An implementation of multi-level network embedding with boosted low-rank matrix approximation | 35 |
benedekrozemberczki/diff2vec | A reference implementation of Diffusion2Vec, a method for learning node embeddings from graph data. | 126 |
benedekrozemberczki/walklets | An implementation of an algorithm for learning graph representations from network data | 105 |
benedekrozemberczki/sine | An implementation of a scalable method for learning node representations in complex networks | 72 |
benedekrozemberczki/sgcn | An implementation of a deep learning algorithm for graph data | 268 |
benedekrozemberczki/graph2vec | This implementation provides a parallel method for graph representations using distributed learning techniques. | 902 |
benedekrozemberczki/seal-ci | A PyTorch implementation of a semi-supervised graph classification model that learns hierarchical representations from labeled and unlabeled graph data. | 208 |
benedekrozemberczki/appnp | A PyTorch implementation of a graph neural network model that learns personalized node representations | 363 |