4.7 Review

Advances in spatiotemporal graph neural network prediction research

Journal

INTERNATIONAL JOURNAL OF DIGITAL EARTH
Volume 16, Issue 1, Pages 2034-2066

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1080/17538947.2023.2220610

Keywords

Spatiotemporal graph neural network; prediction models; spatiotemporal graph data

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This paper presents a comprehensive survey of research on spatiotemporal graph neural networks (ST-GNNs) in the prediction domain. It introduces the background and computational paradigm of ST-GNNs, and thoroughly reviews 59 well-known models in recent years. The paper also summarizes the categories and application fields of spatiotemporal graph data, and analyzes the performance and efficiency of some models. Finally, it summarizes the evolution history and future direction of ST-GNNs, facilitating future researchers to understand the current state of prediction research by ST-GNNs.
Being a kind of non-Euclidean data, spatiotemporal graph data exists everywhere from traffic flow, air quality index to crime case, etc. Unlike the raster data, the irregular and disordered characteristics of spatiotemporal graph data have attracted the research interest of scholars, with the prediction of spatiotemporal graph data being one of the research hot spots. The emergence of spatiotemporal graph neural networks (ST-GNNs) provides a new insight for solving the problem of obtaining spatial correlation for spatiotemporal graph data prediction while achieving state-of-the-art performance. In this paper, a comprehensive survey of research on ST-GNNs prediction domain is presented, where the background of ST-GNNs is introduced before the computational paradigm of ST-GNN is thoroughly reviewed. From the perspective of model construction, 59 well-known models in recent years are classified and discussed. Some of these models are further analyzed in terms of performance and efficiency. Subsequently, the categories and application fields of spatiotemporal graph data are summarized, providing a clear idea of technology selection for different applications. Finally, the evolution history and future direction of ST-GNNs are also summarized, to facilitate future researchers to timely understand the current state of prediction research by ST-GNNs.

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