2023
DOI: 10.1155/2023/3734557
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Meta-Learning-Based Spatial-Temporal Adaption for Coldstart Air Pollution Prediction

Abstract: Air pollution is a significant public concern worldwide, and accurate data-driven air pollution prediction is crucial for developing alerting systems and making urban decisions. As more and more cities establish their monitoring networks, there is a pressing need for coldstart model training with limited data accumulation in new cities. However, traditional spatial-temporal modeling and transfer learning schemes have been challenged under this scenario because of insufficient usage of available source data and… Show more

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