Publication | Open Access
HONEM: Learning Embedding for Higher Order Networks
18
Citations
49
References
2020
Year
Structured PredictionGeometric LearningGraph Representation LearningMachine LearningEngineeringNetwork AnalysisRepresentation LearningData ScienceNetwork ReconstructionHon StructureGraph Neural NetworkFeature LearningHigher Order NetworkKnowledge DiscoveryComputer ScienceDeep LearningNetwork ScienceGraph TheoryBusinessHigh-dimensional NetworkLearning Embedding
Representation learning on networks offers a powerful alternative to the oft painstaking process of manual feature engineering, and, as a result, has enjoyed considerable success in recent years. However, all the existing representation learning methods are based on the first-order network, that is, the network that only captures the pairwise interactions between the nodes. As a result, these methods may fail to incorporate non-Markovian higher order dependencies in the network. Thus, the embeddings that are generated may not accurately represent the underlying phenomena in a network, resulting in inferior performance in different inductive or transductive learning tasks. To address this challenge, this study presents higher order network embedding (HONEM), a higher order network (HON) embedding method that captures the non-Markovian higher order dependencies in a network. HONEM is specifically designed for the HON structure and outperforms other state-of-the-art methods in node classification, network reconstruction, link prediction, and visualization for networks that contain non-Markovian higher order dependencies.
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