Publication | Closed Access
On Embedding Uncertain Graphs
55
Citations
42
References
2017
Year
Unknown Venue
Mathematical ProgrammingEngineeringNetwork AnalysisGraph ProcessingData ScienceData MiningUncertainty QuantificationEmbedding Uncertain GraphsHigh DimensionalityStructural Graph TheoryDiscrete MathematicsCombinatorial OptimizationProbabilistic Graph TheorySocial Network AnalysisTopological Graph TheoryKnowledge DiscoveryComputer ScienceGraph AlgorithmNetwork ScienceGraph TheoryBusinessGraph AnalysisUncertain Graph EmbeddingGraph Data
Graph data are prevalent in communication networks, social media, and biological networks. These data, which are often noisy or inexact, can be represented by uncertain graphs, whose edges are associated with probabilities to indicate the chances that they exist. Recently, researchers have studied various algorithms (e.g., clustering, classification, and k-NN) for uncertain graphs. These solutions face two problems: (1) high dimensionality: uncertain graphs are often highly complex, which can affect the mining quality; and (2) low reusability, where an existing mining algorithm has to be redesigned to deal with uncertain graphs. To tackle these problems, we propose a solution called URGE, or UnceRtain Graph Embedding. Given an uncertain graph G, URGE generates G's embedding, or a set of low-dimensional vectors, which carry the proximity information of nodes in G. This embedding enables the dimensionality of G to be reduced, without destroying node proximity information. Due to its simplicity, existing mining solutions can be used on the embedding. We investigate two low- and high-order node proximity measures in the embedding generation process, and develop novel algorithms to enable fast evaluation.
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