Heterogeneous Data Fusion Considering Spatial Correlations using Graph Convolutional Networks and its Application in Air Quality Prediction
Zhengjing Ma, Gang Mei, Salvatore Cuomo, Francesco Piccialli

TL;DR
This paper introduces a graph convolutional network-based method for fusing heterogeneous spatial data to improve prediction accuracy, demonstrated through an air quality forecasting application.
Contribution
It presents a novel RBF-based data fusion approach combined with spatiotemporal GCNs to consider spatial correlations and global information in heterogeneous data prediction.
Findings
Fused data achieved high consistency.
Prediction models with fused data outperform raw data models.
STGCN outperforms baseline models in accuracy.
Abstract
Heterogeneous data are commonly adopted as the inputs for some models that predict the future trends of some observations. Existing predictive models typically ignore the inconsistencies and imperfections in heterogeneous data while also failing to consider the (1) spatial correlations among monitoring points or (2) predictions for the entire study area. To address the above problems, this paper proposes a deep learning method for fusing heterogeneous data collected from multiple monitoring points using graph convolutional networks (GCNs) to predict the future trends of some observations and evaluates its effectiveness by applying it in an air quality predictions scenario. The essential idea behind the proposed method is to (1) fuse the collected heterogeneous data based on the locations of the monitoring points with regard to their spatial correlations and (2) perform prediction based…
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Taxonomy
MethodsGraph Convolutional Networks
