Please use this identifier to cite or link to this item: https://repository.cihe.edu.hk/jspui/handle/cihe/2249
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dc.contributor.authorChiu, Dah Mingen_US
dc.contributor.otherLi, Y.-
dc.contributor.otherTam, D. S. H.-
dc.contributor.otherXie, S.-
dc.contributor.otherLiu, X.-
dc.contributor.otherYing, Q. F.-
dc.contributor.otherLau, W. C.-
dc.contributor.otherChen, S. Z.-
dc.date.accessioned2022-02-14T06:29:09Z-
dc.date.available2022-02-14T06:29:09Z-
dc.date.issued2020-
dc.identifier.urihttps://repository.cihe.edu.hk/jspui/handle/cihe/2249-
dc.description.abstractWe consider the problem of representation learning for temporal interaction graphs where a network of entities with complex interactions over an extended period of time is modeled as a graph with a rich set of node and edge attributes. In particular, an edge between a node-pair within the graph corresponds to a multi-dimensional time-series. To fully capture and model the dynamics of the network, we propose GTEA, a framework of representation learning for temporal interaction graphs with per-edge time-based aggregation. Under GTEA, a Graph Neural Network (GNN) is integrated with a state-of-the-art sequence model, such as LSTM, Transformer and their time-aware variants. The sequence model generates edge embeddings to encode temporal interaction patterns between each pair of nodes, while the GNN-based backbone learns the topological dependencies and relationships among different nodes. GTEA also incorporates a sparsity-inducing self-attention mechanism to distinguish and focus on the more important neighbors of each node during the aggregation process. By capturing temporal interactive dynamics together with multi-dimensional node and edge attributes in a network, GTEA can learn fine-grained representations for a temporal interaction graph to enable or facilitate other downstream data analytic tasks. Experimental results show that GTEA outperforms state-of-the-art schemes including GraphSAGE, APPNP, and TGAT by delivering higher accuracy (100.00%, 98.51%, 98.05% ,79.90%) and macro-F1 score (100.00%, 98.51%, 96.68% ,79.90%) over four large-scale real-world datasets for binary/ multi-class node classification.en_US
dc.language.isoenen_US
dc.titleGTEA: Representation learning for temporal interaction graphs via edge aggregationen_US
dc.typejournal articleen_US
dc.contributor.affiliationFelizberta Lo Padilla Tong School of Social Sciencesen_US
dc.cihe.affiliatedNo-
item.fulltextWith Fulltext-
item.grantfulltextopen-
item.cerifentitytypePublications-
item.openairecristypehttp://purl.org/coar/resource_type/c_6501-
item.openairetypejournal article-
item.languageiso639-1en-
crisitem.author.deptFelizberta Lo Padilla Tong School of Social Sciences-
crisitem.author.orcid0000-0003-0566-5223-
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