M-NMF
Network embedding model
An implementation of Community Preserving Network Embedding using deep learning and matrix factorization techniques
An implementation of "Community Preserving Network Embedding" (AAAI 2017)
121 stars
7 watching
27 forks
Language: Python
last commit: over 2 years ago
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clusteringcomecommunity-detectiondeep-learningdeepwalkfactorizationimplicit-factorizationlaplacianm-nmfmachine-learningmatrix-factorizationmnmfneural-networknmfnode2vecrepresentation-learningsemisupervised-learningstruc2vectensorflowunsupervised-learning
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