Spatio-temporal prediction using graph neural networks: A survey

Authors

Vincenzo Capone, Angelo Casolaro, Francesco Camastra

Journal

Neurocomputing (Elsevier)

Abstract

The analysis of spatial time series is increasingly relevant as spatio-temporal data are becoming widespread due to the ever-growing diffusion of data acquisition devices. Spatio-temporal prediction is crucial for grasping insights on spatio-temporal dynamics in diverse domains. In many cases, spatio-temporal data can be effectively represented using graphs, thus making Graph Neural Networks the most sounding deep learning architecture for the modelling of spatio-temporal series. The aim of the work is to provide a self-consistent and thorough overview on Graph Neural Networks for spatio-temporal prediction, giving a taxonomy of the diverse approaches proposed in the literature. Moreover, attention is paid to the description of the most used benchmarks and metrics in different real-world spatio-temporal domains and to the discussion of the main drawbacks of spatio-temporal Graph Neural Networks. Furthermore, unlike other similar works on deep learning, statistical methods for spatio-temporal modelling are briefly surveyed in this work. Finally, insights on future developments of Graph Neural Networks for spatio-temporal prediction are suggested.

Description

The review paper “Spatio-Temporal Prediction Using Graph Neural Networks: A Survey” offers a comprehensive overview of Graph Neural Network (GNN) approaches for modeling spatio-temporal data.
This work provides a systematic taxonomy of existing GNN-based methods for spatio-temporal prediction, highlighting their architectures, applications, and performance benchmarks. The survey also examines commonly used datasets and evaluation metrics, discusses current limitations, and briefly compares deep learning methods with traditional statistical approaches.
By outlining emerging challenges and future research directions, the study serves as a key reference for advancing the development of GNN models in spatio-temporal analysis.

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