ClusterGCN
Graph clustering library
A PyTorch implementation of a clustering algorithm for graph neural networks
A PyTorch implementation of "Cluster-GCN: An Efficient Algorithm for Training Deep and Large Graph Convolutional Networks" (KDD 2019).
787 stars
20 watching
135 forks
Language: Python
last commit: about 2 years ago clusteringcommunity-detectiondeep-learningdeepwalkdiff2vecgcngemsecgraph-clusteringgraph-convolutiongraph-convolutional-networksgraph-neural-networksgraph2vecgraphsagelouvainmetismusaeneural-networknode-classificationnode2vecpytorch
Related projects:
Repository | Description | Stars |
---|---|---|
benedekrozemberczki/sgcn | An implementation of a deep learning algorithm for graph data | 268 |
benedekrozemberczki/capsgnn | A PyTorch implementation of a graph neural network architecture | 1,246 |
rusty1s/pytorch_cluster | A PyTorch extension library providing optimized graph cluster algorithms | 824 |
benedekrozemberczki/mixhop-and-n-gcn | A deep learning framework implementation of higher-order graph convolutional architectures and their applications | 402 |
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/gam | An implementation of a graph classification model using structural attention and PyTorch | 268 |
benedekrozemberczki/appnp | A PyTorch implementation of a graph neural network model that learns personalized node representations | 363 |
benedekrozemberczki/splitter | A PyTorch implementation of node representation learning using multiple social contexts | 213 |
benedekrozemberczki/graphwaveletneuralnetwork | An implementation of a neural network for graph data, specifically designed to process wavelet transforms on graphs. | 574 |
benedekrozemberczki/pdn | An implementation of a neural network architecture designed to process graph-structured data | 57 |
benedekrozemberczki/simgnn | An implementation of SimGNN, a neural network approach to computing graph similarity | 759 |
benedekrozemberczki/gemsec | A reference implementation of graph embedding with clustering using deep learning techniques | 252 |
benedekrozemberczki/pytorch_geometric_temporal | A PyTorch extension for building temporal graph neural networks with support for recurrent and attention-based models | 2,669 |
chingyaoc/ggnn.pytorch | An implementation of a neural network architecture for processing graph-structured data and making predictions on nodes. | 465 |
benedekrozemberczki/graph2vec | This implementation provides a parallel method for graph representations using distributed learning techniques. | 902 |