2022
DOI: 10.1140/epjds/s13688-022-00344-8
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Time-varying graph representation learning via higher-order skip-gram with negative sampling

Abstract: Representation learning models for graphs are a successful family of techniques that project nodes into feature spaces that can be exploited by other machine learning algorithms. Since many real-world networks are inherently dynamic, with interactions among nodes changing over time, these techniques can be defined both for static and for time-varying graphs. Here, we show how the skip-gram embedding approach can be generalized to perform implicit tensor factorization on different tensor representations of time… Show more

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References 57 publications
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