Publication | Closed Access
GraRep
1.6K
Citations
27
References
2015
Year
Unknown Venue
Graph Neural NetworkEngineeringGraph TheoryData ScienceMachine LearningDeepwalk ModelKnowledge DiscoveryBusinessVertex RepresentationsGraph Signal ProcessingComputer ScienceGraph AnalysisDeep LearningSkip-gram ModelGraph Processing
In this paper, we present {GraRep}, a novel model for learning vertex representations of weighted graphs. This model learns low dimensional vectors to represent vertices appearing in a graph and, unlike existing work, integrates global structural information of the graph into the learning process. We also formally analyze the connections between our work and several previous research efforts, including the DeepWalk model of Perozzi et al. as well as the skip-gram model with negative sampling of Mikolov et al.
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