Conference Proceedings
Temporal network representation learning via historical neighborhoods aggregation
S Huang, Z Bao, G Li, Y Zhou, JS Culpepper
Proceedings International Conference on Data Engineering | Published : 2020
Abstract
Network embedding is an effective method to learn low-dimensional representations of nodes, which can be applied to various real-life applications such as visualization, node classification, and link prediction. Although significant progress has been made on this problem in recent years, several important challenges remain, such as how to properly capture temporal information in evolving networks. In practice, most networks are continually evolving. Some networks only add new edges or nodes such as authorship networks, while others support removal of nodes or edges such as internet data routing. If patterns exist in the changes of the network structure, we can better understand the relations..
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Awarded by Google
Funding Acknowledgements
This work was partially supported by ARC DP170102726, DP180102050, DP170102231, NSFC 61728204, 91646204 and Google. Guoliang Li was partially supported by the 973 Program of China (2015CB358700), NSFC (61632016, 61521002, 61661166012), Huawei, and TAL education.