walklets

Graph representation algorithm

An implementation of an algorithm for learning graph representations from network data

A lightweight implementation of Walklets from "Don't Walk Skip! Online Learning of Multi-scale Network Embeddings" (ASONAM 2017).

GitHub

105 stars
9 watching
22 forks
Language: Python
last commit: over 1 year ago
Linked from 1 awesome list

deep-learningdeepwalkdimensionality-reductiondont-walk-skipedge-predictionembeddinggensimgraph-convolutiongraph-embeddinggraph-mininggraph-neural-networksgraphletmachine-learningmultiscalenode-classificationnode-embeddingnode2vecwalkletword-embeddingword2vec

Backlinks from these awesome lists:

Related projects:

Repository Description Stars
benedekrozemberczki/attentionwalk An implementation of a deep learning algorithm to generate node embeddings in graphs 320
benedekrozemberczki/graph2vec This implementation provides a parallel method for graph representations using distributed learning techniques. 902
benedekrozemberczki/grarep An implementation of a method for learning graph representations from global structural information in a network 63
benedekrozemberczki/role2vec An implementation of a deep learning-based method for creating vector representations of nodes in a graph 166
benedekrozemberczki/sgcn An implementation of a deep learning algorithm for graph data 268
benedekrozemberczki/tene A sparsity-aware implementation of a deep learning algorithm for graph embedding with text information. 73
benedekrozemberczki/graphwaveletneuralnetwork An implementation of a neural network for graph data, specifically designed to process wavelet transforms on graphs. 574
benedekrozemberczki/bane A software implementation of a graph embedding algorithm 86
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/musae Implementation of a method for generating node embeddings in graph data with attributed information 159
benedekrozemberczki/mixhop-and-n-gcn A deep learning framework implementation of higher-order graph convolutional architectures and their applications 402
benedekrozemberczki/pdn An implementation of a neural network architecture designed to process graph-structured data 57
benedekrozemberczki/asne A software implementation of a method to reduce the dimensionality of attributed graphs 82
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