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arxiv_ml 85% Match Research Paper Environmental scientists,Public health officials,Researchers in Bayesian deep learning and spatiotemporal modeling 20 hours ago

Tackling Incomplete Data in Air Quality Prediction: A Bayesian Deep Learning Framework for Uncertainty Quantification

ai-safety › robustness
📄 Abstract

Abstract: Accurate air quality forecasts are vital for public health alerts, exposure assessment, and emissions control. In practice, observational data are often missing in varying proportions and patterns due to collection and transmission issues. These incomplete spatiotemporal records impede reliable inference and risk assessment and can lead to overconfident extrapolation. To address these challenges, we propose an end to end framework, the channel gated learning unit based spatiotemporal bayesian neural field (CGLUBNF). It uses Fourier features with a graph attention encoder to capture multiscale spatial dependencies and seasonal temporal dynamics. A channel gated learning unit, equipped with learnable activations and gated residual connections, adaptively filters and amplifies informative features. Bayesian inference jointly optimizes predictive distributions and parameter uncertainty, producing point estimates and calibrated prediction intervals. We conduct a systematic evaluation on two real world datasets, covering four typical missing data patterns and comparing against five state of the art baselines. CGLUBNF achieves superior prediction accuracy and sharper confidence intervals. In addition, we further validate robustness across multiple prediction horizons and analysis the contribution of extraneous variables. This research lays a foundation for reliable deep learning based spatio-temporal forecasting with incomplete observations in emerging sensing paradigms, such as real world vehicle borne mobile monitoring.

Key Contributions

This paper proposes CGLUBNF, an end-to-end Bayesian deep learning framework for air quality prediction that robustly handles incomplete spatiotemporal data. It provides calibrated prediction intervals, quantifying uncertainty in forecasts, which is crucial for public health alerts and risk assessment.

Business Value

Improves the accuracy and reliability of air quality forecasts, enabling better public health decisions, environmental policy making, and exposure management.