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arxiv: 1501.00358 · v1 · pith:INL4EC3Bnew · submitted 2015-01-02 · 💻 cs.LG

Comprehend DeepWalk as Matrix Factorization

classification 💻 cs.LG
keywords deepwalknodealgorithmlearningmatrixmodelskip-gramactually
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Word2vec, as an efficient tool for learning vector representation of words has shown its effectiveness in many natural language processing tasks. Mikolov et al. issued Skip-Gram and Negative Sampling model for developing this toolbox. Perozzi et al. introduced the Skip-Gram model into the study of social network for the first time, and designed an algorithm named DeepWalk for learning node embedding on a graph. We prove that the DeepWalk algorithm is actually factoring a matrix M where each entry M_{ij} is logarithm of the average probability that node i randomly walks to node j in fix steps.

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