2021
DOI: 10.48550/arxiv.2101.01229
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A Survey on Embedding Dynamic Graphs

Abstract: Embedding static graphs in low-dimensional vector spaces plays a key role in network analytics and inference, supporting applications like node classification, link prediction, and graph visualization.However, many real-world networks present dynamic behavior, including topological evolution, feature evolution, and diffusion. Therefore, several methods for embedding dynamic graphs have been proposed to learn network representations over time, facing novel challenges, such as time-domain modeling, temporal feat… Show more

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Cited by 6 publications
(9 citation statements)
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“…The former includes only structural information, while the latter includes another critical parameter: time. The dynamic continuous representation contains node interactions [26], and timestamped edges [12], where instantaneous events are recorded into the raw graph representations, such as creation and removal of nodes and edges.…”
Section: Graph Representationsmentioning
confidence: 99%
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“…The former includes only structural information, while the latter includes another critical parameter: time. The dynamic continuous representation contains node interactions [26], and timestamped edges [12], where instantaneous events are recorded into the raw graph representations, such as creation and removal of nodes and edges.…”
Section: Graph Representationsmentioning
confidence: 99%
“…For representation learning, the raw representations should be prepossessed to dynamic graphs first. Current researches mainly focus on two dynamic graphs: the continuous and discrete graphs [9,10,12,13]. The dynamic continuous graphs store the most information by projecting the raw representations to a 2D temporal graph, which is also a specific static graph appended with temporal information [11].…”
Section: Graph Representationsmentioning
confidence: 99%
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“…Graph embedding [31,[130][131][132] bridges the gap of the utilization of non-Euclidean data in machine learning methods for downstream tasks, including node classification [33,34], graph classification [35][36][37][38][39], link prediction [40][41][42][43], clustering [44] and stuff. Specifically, as for building the feature vectors of data instances as inputs required by machine learning methods [133], typical representation learning techniques, such as the artificially given methods [134] implementing based on hand-engineering with expert knowledge and the bag-of-words methods [135], are usually constrained to Euclidean data.…”
Section: Definitions and Conceptsmentioning
confidence: 99%