Publication | Open Access
Fast, Warped Graph Embedding: Unifying Framework and One-Click Algorithm
25
Citations
21
References
2017
Year
Cluster ComputingGraph SparsityEngineeringNetwork AnalysisGraph DatabaseSocial NetworkGraph ProcessingComputational Social ScienceData ScienceComputational GeometrySocial Network AnalysisGraph EmbeddingKnowledge DiscoveryLoss FunctionWarped Graph EmbeddingComputer ScienceGraph AlgorithmComputational ScienceNetwork ScienceGraph TheoryBusinessGraph AnalysisGraph Neural Network
What is the best way to describe a user in a social network with just a few numbers? Mathematically, this is equivalent to assigning a vector representation to each node in a graph, a process called graph embedding. We propose a novel framework, GEM-D that unifies most of the past algorithms such as LapEigs, DeepWalk and node2vec. GEM-D achieves its goal by decomposing any graph embedding algorithm into three building blocks: node proximity function, warping function and loss function. Based on thorough analysis of GEM-D, we propose a novel algorithm, called UltimateWalk, which outperforms the most-recently proposed state-of-the-art DeepWalk and node2vec. The contributions of this work are: (1) The proposed framework, GEM-D unifies the past graph embedding algorithms and provides a general recipe of how to design a graph embedding; (2) the nonlinearlity in the warping function contributes significantly to the quality of embedding and the exponential function is empirically optimal; (3) the proposed algorithm, UltimateWalk is one-click (no user-defined parameters), scalable and has a closed-form solution.
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