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Conference Paper: Hierarchically Structured Transformer Networks for Fine-Grained Spatial Event Forecasting

TitleHierarchically Structured Transformer Networks for Fine-Grained Spatial Event Forecasting
Authors
KeywordsDeep neural networks
Spatial-temporal data mining
Issue Date2020
Citation
The Web Conference 2020 - Proceedings of the World Wide Web Conference, WWW 2020, 2020, p. 2320-2330 How to Cite?
AbstractSpatial event forecasting is challenging and crucial for urban sensing scenarios, which is beneficial for a wide spectrum of spatial-temporal mining applications, ranging from traffic management, public safety, to environment policy making. In spite of significant progress has been made to solve spatial-temporal prediction problem, most existing deep learning based methods based on a coarse-grained spatial setting and the success of such methods largely relies on data sufficiency. In many real-world applications, predicting events with a fine-grained spatial resolution do play a critical role to provide high discernibility of spatial-temporal data distributions. However, in such cases, applying existing methods will result in weak performance since they may not well capture the quality spatial-temporal representations when training triple instances are highly imbalanced across locations and time. To tackle this challenge, we develop a hierarchically structured Spatial-Temporal ransformer network (STtrans) which leverages a main embedding space to capture the inter-dependencies across time and space for alleviating the data imbalance issue. In our STtrans framework, the first-stage transformer module discriminates different types of region and time-wise relations. To make the latent spatial-temporal representations be reflective of the relational structure between categories, we further develop a cross-category fusion transformer network to endow STtrans with the capability to preserve the semantic signals in a fully dynamic manner. Finally, an adversarial training strategy is introduced to yield a robust spatial-temporal learning under data imbalance. Extensive experiments on real-world imbalanced spatial-temporal datasets from NYC and Chicago demonstrate the superiority of our method over various state-of-the-art baselines.
Persistent Identifierhttp://hdl.handle.net/10722/308816
ISI Accession Number ID

 

DC FieldValueLanguage
dc.contributor.authorWu, Xian-
dc.contributor.authorHuang, Chao-
dc.contributor.authorZhang, Chuxu-
dc.contributor.authorChawla, Nitesh V.-
dc.date.accessioned2021-12-08T07:50:11Z-
dc.date.available2021-12-08T07:50:11Z-
dc.date.issued2020-
dc.identifier.citationThe Web Conference 2020 - Proceedings of the World Wide Web Conference, WWW 2020, 2020, p. 2320-2330-
dc.identifier.urihttp://hdl.handle.net/10722/308816-
dc.description.abstractSpatial event forecasting is challenging and crucial for urban sensing scenarios, which is beneficial for a wide spectrum of spatial-temporal mining applications, ranging from traffic management, public safety, to environment policy making. In spite of significant progress has been made to solve spatial-temporal prediction problem, most existing deep learning based methods based on a coarse-grained spatial setting and the success of such methods largely relies on data sufficiency. In many real-world applications, predicting events with a fine-grained spatial resolution do play a critical role to provide high discernibility of spatial-temporal data distributions. However, in such cases, applying existing methods will result in weak performance since they may not well capture the quality spatial-temporal representations when training triple instances are highly imbalanced across locations and time. To tackle this challenge, we develop a hierarchically structured Spatial-Temporal ransformer network (STtrans) which leverages a main embedding space to capture the inter-dependencies across time and space for alleviating the data imbalance issue. In our STtrans framework, the first-stage transformer module discriminates different types of region and time-wise relations. To make the latent spatial-temporal representations be reflective of the relational structure between categories, we further develop a cross-category fusion transformer network to endow STtrans with the capability to preserve the semantic signals in a fully dynamic manner. Finally, an adversarial training strategy is introduced to yield a robust spatial-temporal learning under data imbalance. Extensive experiments on real-world imbalanced spatial-temporal datasets from NYC and Chicago demonstrate the superiority of our method over various state-of-the-art baselines.-
dc.languageeng-
dc.relation.ispartofThe Web Conference 2020 - Proceedings of the World Wide Web Conference, WWW 2020-
dc.subjectDeep neural networks-
dc.subjectSpatial-temporal data mining-
dc.titleHierarchically Structured Transformer Networks for Fine-Grained Spatial Event Forecasting-
dc.typeConference_Paper-
dc.description.naturelink_to_subscribed_fulltext-
dc.identifier.doi10.1145/3366423.3380296-
dc.identifier.scopuseid_2-s2.0-85086572234-
dc.identifier.spage2320-
dc.identifier.epage2330-
dc.identifier.isiWOS:000626273302036-

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