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Hierarchically Structured Transformer Networks for Fine-Grained Spatial Event Forecasting

Xian Wu, Chao Huang, Chuxu Zhang, Nitesh V. Chawla

202051 citationsDOIOpen Access PDF

Abstract

Spatial 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.

Topics & Concepts

Computer scienceData miningRangingEvent (particle physics)Spatial analysisDeep learningMachine learningImage resolutionTransformerArtificial intelligenceTemporal resolutionRemote sensingGeographyEngineeringVoltageElectrical engineeringPhysicsQuantum mechanicsTelecommunicationsTraffic Prediction and Management TechniquesTime Series Analysis and ForecastingHuman Mobility and Location-Based Analysis