dyngraph2vec: Capturing network dynamics using dynamic graph representation learning

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摘要

Learning graph representations is a fundamental task aimed at capturing various properties of graphs in vector space. The most recent methods learn such representations for static networks. However, real-world networks evolve over time and have varying dynamics. Capturing such evolution is key to predicting the properties of unseen networks. To understand how the network dynamics affect the prediction performance, we propose an embedding approach which learns the structure of evolution in dynamic graphs and can predict unseen links with higher precision. Our model, dyngraph2vec, learns the temporal transitions in the network using a deep architecture composed of dense and recurrent layers. We motivate the need for capturing dynamics for the prediction on a toy dataset created using stochastic block models. We then demonstrate the efficacy of dyngraph2vec over existing state-of-the-art methods on two real-world datasets. We observe that learning dynamics can improve the quality of embedding and yield better performance in link prediction.

论文关键词:Graph embedding techniques,Graph embedding applications,Python graph embedding methods GEM library

论文评审过程:Received 10 November 2018, Revised 6 June 2019, Accepted 25 June 2019, Available online 2 July 2019, Version of Record 18 November 2019.

论文官网地址:https://doi.org/10.1016/j.knosys.2019.06.024